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24
8be6773c-95ca-43d1-9e6b-04d6c304e4a0
Here are the specified edge distances for an undirected planar graph: A-B 0.3468 B-C 0.5497 A-C 0.83 B-D 0.0896 C-D 0.5657 A-D 0.4102 Employ Dijkstra’s algorithm to calculate the shortest path from A to D, detailing each step of the solution.
<think> Step 1: Initialization Initial distances: {'A': 0, 'B': inf, 'C': inf, 'D': inf} Initial previous: {'A': None, 'B': None, 'C': None, 'D': None} Set distance[A] = 0 Initial priority queue: [(0, 'A')] Step 2: Extract minimum from priority queue Popped node A with distance 0 Mark A as visited Visited set: {'A'} Checking neighbours of A Inspect edge A -> B (weight 0.3468) New possible distance = 0 + 0.3468 = 0.3468 Update: 0.3468 < inf Updated distance[B] = 0.3468 Updated previous[B] = A Pushed (0.3468, B) to queue Inspect edge A -> D (weight 0.4102) New possible distance = 0 + 0.4102 = 0.4102 Update: 0.4102 < inf Updated distance[D] = 0.4102 Updated previous[D] = A Pushed (0.4102, D) to queue Inspect edge A -> C (weight 0.83) New possible distance = 0 + 0.83 = 0.83 Update: 0.83 < inf Updated distance[C] = 0.83 Updated previous[C] = A Pushed (0.83, C) to queue Priority queue now: [(0.3468, 'B'), (0.4102, 'D'), (0.83, 'C')] Step 3: Extract minimum from priority queue Popped node B with distance 0.3468 Mark B as visited Visited set: {'A', 'B'} Checking neighbours of B Inspect edge B -> A (weight 0.3468) Neighbour A already visited, skipping. Inspect edge B -> C (weight 0.5497) New possible distance = 0.3468 + 0.5497 = 0.8965 No update needed (current best: 0.83) Inspect edge B -> D (weight 0.0896) New possible distance = 0.3468 + 0.0896 = 0.4364 No update needed (current best: 0.4102) Priority queue now: [(0.4102, 'D'), (0.83, 'C')] Step 4: Extract minimum from priority queue Popped node D with distance 0.4102 Mark D as visited Visited set: {'A', 'D', 'B'} Reached target node D, stopping early. Step Final: Reconstruct path Shortest path: A -> D Total distance: 0.4102 </think> <response>The shortest path from A to D is A -> D. Total distance 0.4102.</response>
4
925cccd4-b782-429b-a2ca-4b6461743c25
Below are the edge weights for an undirected planar graph: A-B 0.4512 A-D 0.5066 A-C 0.1241 C-D 0.4896 B-C 0.5717 A-E 0.5254 D-E 0.0522 B-E 0.8243 Apply Dijkstra’s algorithm to compute the shortest route from C to B, providing a detailed explanation of every step.
<think> Step 1: Initialization Initial distances: {'A': inf, 'B': inf, 'C': 0, 'D': inf, 'E': inf} Initial previous: {'A': None, 'B': None, 'C': None, 'D': None, 'E': None} Set distance[C] = 0 Initial priority queue: [(0, 'C')] Step 2: Extract minimum from priority queue Popped node C with distance 0 Mark C as visited Visited set: {'C'} Checking neighbours of C Inspect edge C -> B (weight 0.5717) New possible distance = 0 + 0.5717 = 0.5717 Update: 0.5717 < inf Updated distance[B] = 0.5717 Updated previous[B] = C Pushed (0.5717, B) to queue Inspect edge C -> D (weight 0.4896) New possible distance = 0 + 0.4896 = 0.4896 Update: 0.4896 < inf Updated distance[D] = 0.4896 Updated previous[D] = C Pushed (0.4896, D) to queue Inspect edge C -> A (weight 0.1241) New possible distance = 0 + 0.1241 = 0.1241 Update: 0.1241 < inf Updated distance[A] = 0.1241 Updated previous[A] = C Pushed (0.1241, A) to queue Priority queue now: [(0.1241, 'A'), (0.5717, 'B'), (0.4896, 'D')] Step 3: Extract minimum from priority queue Popped node A with distance 0.1241 Mark A as visited Visited set: {'C', 'A'} Checking neighbours of A Inspect edge A -> B (weight 0.4512) New possible distance = 0.1241 + 0.4512 = 0.5753 No update needed (current best: 0.5717) Inspect edge A -> E (weight 0.5254) New possible distance = 0.1241 + 0.5254 = 0.6495 Update: 0.6495 < inf Updated distance[E] = 0.6495 Updated previous[E] = A Pushed (0.6495, E) to queue Inspect edge A -> D (weight 0.5066) New possible distance = 0.1241 + 0.5066 = 0.6307 No update needed (current best: 0.4896) Inspect edge A -> C (weight 0.1241) Neighbour C already visited, skipping. Priority queue now: [(0.4896, 'D'), (0.5717, 'B'), (0.6495, 'E')] Step 4: Extract minimum from priority queue Popped node D with distance 0.4896 Mark D as visited Visited set: {'C', 'A', 'D'} Checking neighbours of D Inspect edge D -> E (weight 0.0522) New possible distance = 0.4896 + 0.0522 = 0.5418 Update: 0.5418 < 0.6495 Updated distance[E] = 0.5418 Updated previous[E] = D Pushed (0.5418, E) to queue Inspect edge D -> A (weight 0.5066) Neighbour A already visited, skipping. Inspect edge D -> C (weight 0.4896) Neighbour C already visited, skipping. Priority queue now: [(0.5418, 'E'), (0.6495, 'E'), (0.5717, 'B')] Step 5: Extract minimum from priority queue Popped node E with distance 0.5418 Mark E as visited Visited set: {'C', 'A', 'E', 'D'} Checking neighbours of E Inspect edge E -> A (weight 0.5254) Neighbour A already visited, skipping. Inspect edge E -> D (weight 0.0522) Neighbour D already visited, skipping. Inspect edge E -> B (weight 0.8243) New possible distance = 0.5418 + 0.8243 = 1.3660999999999999 No update needed (current best: 0.5717) Priority queue now: [(0.5717, 'B'), (0.6495, 'E')] Step 6: Extract minimum from priority queue Popped node B with distance 0.5717 Mark B as visited Visited set: {'A', 'D', 'C', 'E', 'B'} Reached target node B, stopping early. Step Final: Reconstruct path Shortest path: C -> B Total distance: 0.5717 </think> <response>The shortest path from C to B is C -> B. Total distance 0.5717.</response>
5
d060590f-b97e-4f5c-a22a-869ef729ef46
These are the edge measurements for an undirected planar graph: A-C 0.1238 A-B 0.6561 B-D 0.1483 B-C 0.5933 A-D 0.776 Determine the shortest path from node C to node D through Dijkstra’s algorithm, and provide a detailed breakdown of each step.
<think> Step 1: Initialization Initial distances: {'A': inf, 'B': inf, 'C': 0, 'D': inf} Initial previous: {'A': None, 'B': None, 'C': None, 'D': None} Set distance[C] = 0 Initial priority queue: [(0, 'C')] Step 2: Extract minimum from priority queue Popped node C with distance 0 Mark C as visited Visited set: {'C'} Checking neighbours of C Inspect edge C -> B (weight 0.5933) New possible distance = 0 + 0.5933 = 0.5933 Update: 0.5933 < inf Updated distance[B] = 0.5933 Updated previous[B] = C Pushed (0.5933, B) to queue Inspect edge C -> A (weight 0.1238) New possible distance = 0 + 0.1238 = 0.1238 Update: 0.1238 < inf Updated distance[A] = 0.1238 Updated previous[A] = C Pushed (0.1238, A) to queue Priority queue now: [(0.1238, 'A'), (0.5933, 'B')] Step 3: Extract minimum from priority queue Popped node A with distance 0.1238 Mark A as visited Visited set: {'C', 'A'} Checking neighbours of A Inspect edge A -> B (weight 0.6561) New possible distance = 0.1238 + 0.6561 = 0.7799 No update needed (current best: 0.5933) Inspect edge A -> D (weight 0.776) New possible distance = 0.1238 + 0.776 = 0.8998 Update: 0.8998 < inf Updated distance[D] = 0.8998 Updated previous[D] = A Pushed (0.8998, D) to queue Inspect edge A -> C (weight 0.1238) Neighbour C already visited, skipping. Priority queue now: [(0.5933, 'B'), (0.8998, 'D')] Step 4: Extract minimum from priority queue Popped node B with distance 0.5933 Mark B as visited Visited set: {'C', 'A', 'B'} Checking neighbours of B Inspect edge B -> A (weight 0.6561) Neighbour A already visited, skipping. Inspect edge B -> C (weight 0.5933) Neighbour C already visited, skipping. Inspect edge B -> D (weight 0.1483) New possible distance = 0.5933 + 0.1483 = 0.7416 Update: 0.7416 < 0.8998 Updated distance[D] = 0.7416 Updated previous[D] = B Pushed (0.7416, D) to queue Priority queue now: [(0.7416, 'D'), (0.8998, 'D')] Step 5: Extract minimum from priority queue Popped node D with distance 0.7416 Mark D as visited Visited set: {'C', 'A', 'D', 'B'} Reached target node D, stopping early. Step Final: Reconstruct path Shortest path: C -> B -> D Total distance: 0.7416 </think> <response>The shortest path from C to D is C -> B -> D. Total distance 0.7416.</response>
4
22273040-efcc-4262-b642-e92290c03820
The following values represent the edge lengths of an undirected planar graph: A-B 0.343 C-D 0.7491 A-D 0.8116 B-D 0.5056 A-C 0.6054 B-C 0.4137 Using Dijkstra's algorithm, determine the shortest path from D to B and document each step thoroughly.
<think> Step 1: Initialization Initial distances: {'A': inf, 'B': inf, 'C': inf, 'D': 0} Initial previous: {'A': None, 'B': None, 'C': None, 'D': None} Set distance[D] = 0 Initial priority queue: [(0, 'D')] Step 2: Extract minimum from priority queue Popped node D with distance 0 Mark D as visited Visited set: {'D'} Checking neighbours of D Inspect edge D -> A (weight 0.8116) New possible distance = 0 + 0.8116 = 0.8116 Update: 0.8116 < inf Updated distance[A] = 0.8116 Updated previous[A] = D Pushed (0.8116, A) to queue Inspect edge D -> C (weight 0.7491) New possible distance = 0 + 0.7491 = 0.7491 Update: 0.7491 < inf Updated distance[C] = 0.7491 Updated previous[C] = D Pushed (0.7491, C) to queue Inspect edge D -> B (weight 0.5056) New possible distance = 0 + 0.5056 = 0.5056 Update: 0.5056 < inf Updated distance[B] = 0.5056 Updated previous[B] = D Pushed (0.5056, B) to queue Priority queue now: [(0.5056, 'B'), (0.8116, 'A'), (0.7491, 'C')] Step 3: Extract minimum from priority queue Popped node B with distance 0.5056 Mark B as visited Visited set: {'D', 'B'} Reached target node B, stopping early. Step Final: Reconstruct path Shortest path: D -> B Total distance: 0.5056 </think> <response>The shortest path from D to B is D -> B. Total distance 0.5056.</response>
4
d2a1db6d-afa0-43de-9234-74d2353a075d
Consider the following edge lengths for an undirected planar graph: A-B 0.5294 D-E 0.1495 A-F 0.2842 A-D 0.2813 D-F 0.2777 F-G 0.0959 A-C 0.7288 B-F 0.2476 C-E 0.4697 C-D 0.5297 E-F 0.3669 D-G 0.2256 A-G 0.1913 B-E 0.5056 Determine the shortest path from B to E by implementing Dijkstra’s algorithm and explain each stage in detail.
<think> Step 1: Initialization Initial distances: {'A': inf, 'B': 0, 'C': inf, 'D': inf, 'E': inf, 'F': inf, 'G': inf} Initial previous: {'A': None, 'B': None, 'C': None, 'D': None, 'E': None, 'F': None, 'G': None} Set distance[B] = 0 Initial priority queue: [(0, 'B')] Step 2: Extract minimum from priority queue Popped node B with distance 0 Mark B as visited Visited set: {'B'} Checking neighbours of B Inspect edge B -> A (weight 0.5294) New possible distance = 0 + 0.5294 = 0.5294 Update: 0.5294 < inf Updated distance[A] = 0.5294 Updated previous[A] = B Pushed (0.5294, A) to queue Inspect edge B -> F (weight 0.2476) New possible distance = 0 + 0.2476 = 0.2476 Update: 0.2476 < inf Updated distance[F] = 0.2476 Updated previous[F] = B Pushed (0.2476, F) to queue Inspect edge B -> E (weight 0.5056) New possible distance = 0 + 0.5056 = 0.5056 Update: 0.5056 < inf Updated distance[E] = 0.5056 Updated previous[E] = B Pushed (0.5056, E) to queue Priority queue now: [(0.2476, 'F'), (0.5294, 'A'), (0.5056, 'E')] Step 3: Extract minimum from priority queue Popped node F with distance 0.2476 Mark F as visited Visited set: {'F', 'B'} Checking neighbours of F Inspect edge F -> B (weight 0.2476) Neighbour B already visited, skipping. Inspect edge F -> E (weight 0.3669) New possible distance = 0.2476 + 0.3669 = 0.6145 No update needed (current best: 0.5056) Inspect edge F -> G (weight 0.0959) New possible distance = 0.2476 + 0.0959 = 0.34349999999999997 Update: 0.34349999999999997 < inf Updated distance[G] = 0.34349999999999997 Updated previous[G] = F Pushed (0.34349999999999997, G) to queue Inspect edge F -> A (weight 0.2842) New possible distance = 0.2476 + 0.2842 = 0.5318 No update needed (current best: 0.5294) Inspect edge F -> D (weight 0.2777) New possible distance = 0.2476 + 0.2777 = 0.5253 Update: 0.5253 < inf Updated distance[D] = 0.5253 Updated previous[D] = F Pushed (0.5253, D) to queue Priority queue now: [(0.34349999999999997, 'G'), (0.5253, 'D'), (0.5056, 'E'), (0.5294, 'A')] Step 4: Extract minimum from priority queue Popped node G with distance 0.34349999999999997 Mark G as visited Visited set: {'F', 'G', 'B'} Checking neighbours of G Inspect edge G -> A (weight 0.1913) New possible distance = 0.34349999999999997 + 0.1913 = 0.5347999999999999 No update needed (current best: 0.5294) Inspect edge G -> F (weight 0.0959) Neighbour F already visited, skipping. Inspect edge G -> D (weight 0.2256) New possible distance = 0.34349999999999997 + 0.2256 = 0.5690999999999999 No update needed (current best: 0.5253) Priority queue now: [(0.5056, 'E'), (0.5253, 'D'), (0.5294, 'A')] Step 5: Extract minimum from priority queue Popped node E with distance 0.5056 Mark E as visited Visited set: {'F', 'G', 'E', 'B'} Reached target node E, stopping early. Step Final: Reconstruct path Shortest path: B -> E Total distance: 0.5056 </think> <response>The shortest path from B to E is B -> E. Total distance 0.5056.</response>
7
c2129327-1a57-45ae-96de-e4bace96a27a
The undirected planar graph includes these edge weights: D-F 0.2043 C-J 0.5155 A-E 0.3782 E-G 0.254 D-H 0.6831 C-G 0.212 H-I 0.5895 F-H 0.4827 B-F 0.2686 A-C 0.2592 E-J 0.5178 A-G 0.2614 A-D 0.4041 C-D 0.225 F-I 0.3825 C-F 0.3733 B-H 0.2666 C-I 0.4709 G-J 0.423 B-I 0.3382 I-J 0.3975 Apply Dijkstra’s algorithm to determine the shortest route from D to F, making sure to show all intermediate steps.
<think> Step 1: Initialization Initial distances: {'A': inf, 'B': inf, 'C': inf, 'D': 0, 'E': inf, 'F': inf, 'G': inf, 'H': inf, 'I': inf, 'J': inf} Initial previous: {'A': None, 'B': None, 'C': None, 'D': None, 'E': None, 'F': None, 'G': None, 'H': None, 'I': None, 'J': None} Set distance[D] = 0 Initial priority queue: [(0, 'D')] Step 2: Extract minimum from priority queue Popped node D with distance 0 Mark D as visited Visited set: {'D'} Checking neighbours of D Inspect edge D -> H (weight 0.6831) New possible distance = 0 + 0.6831 = 0.6831 Update: 0.6831 < inf Updated distance[H] = 0.6831 Updated previous[H] = D Pushed (0.6831, H) to queue Inspect edge D -> F (weight 0.2043) New possible distance = 0 + 0.2043 = 0.2043 Update: 0.2043 < inf Updated distance[F] = 0.2043 Updated previous[F] = D Pushed (0.2043, F) to queue Inspect edge D -> A (weight 0.4041) New possible distance = 0 + 0.4041 = 0.4041 Update: 0.4041 < inf Updated distance[A] = 0.4041 Updated previous[A] = D Pushed (0.4041, A) to queue Inspect edge D -> C (weight 0.225) New possible distance = 0 + 0.225 = 0.225 Update: 0.225 < inf Updated distance[C] = 0.225 Updated previous[C] = D Pushed (0.225, C) to queue Priority queue now: [(0.2043, 'F'), (0.225, 'C'), (0.4041, 'A'), (0.6831, 'H')] Step 3: Extract minimum from priority queue Popped node F with distance 0.2043 Mark F as visited Visited set: {'D', 'F'} Reached target node F, stopping early. Step Final: Reconstruct path Shortest path: D -> F Total distance: 0.2043 </think> <response>The shortest path from D to F is D -> F. Total distance 0.2043.</response>
10
d5d20dad-4288-461c-bb81-4cd52c74e4c2
Here are the specified edge distances for an undirected planar graph: C-G 0.3651 E-H 0.7073 A-F 0.3774 F-H 0.6486 D-G 0.0551 B-D 0.3397 I-J 0.0355 C-D 0.3135 H-I 0.9061 A-E 0.3844 E-G 0.3093 G-J 0.5347 E-F 0.4911 B-C 0.2204 H-J 0.9416 C-J 0.8766 A-B 0.3152 E-I 0.6937 D-E 0.2985 G-I 0.5231 B-E 0.3538 A-C 0.5351 Employ Dijkstra’s algorithm to calculate the shortest path from A to E, detailing each step of the solution.
<think> Step 1: Initialization Initial distances: {'A': 0, 'B': inf, 'C': inf, 'D': inf, 'E': inf, 'F': inf, 'G': inf, 'H': inf, 'I': inf, 'J': inf} Initial previous: {'A': None, 'B': None, 'C': None, 'D': None, 'E': None, 'F': None, 'G': None, 'H': None, 'I': None, 'J': None} Set distance[A] = 0 Initial priority queue: [(0, 'A')] Step 2: Extract minimum from priority queue Popped node A with distance 0 Mark A as visited Visited set: {'A'} Checking neighbours of A Inspect edge A -> C (weight 0.5351) New possible distance = 0 + 0.5351 = 0.5351 Update: 0.5351 < inf Updated distance[C] = 0.5351 Updated previous[C] = A Pushed (0.5351, C) to queue Inspect edge A -> F (weight 0.3774) New possible distance = 0 + 0.3774 = 0.3774 Update: 0.3774 < inf Updated distance[F] = 0.3774 Updated previous[F] = A Pushed (0.3774, F) to queue Inspect edge A -> B (weight 0.3152) New possible distance = 0 + 0.3152 = 0.3152 Update: 0.3152 < inf Updated distance[B] = 0.3152 Updated previous[B] = A Pushed (0.3152, B) to queue Inspect edge A -> E (weight 0.3844) New possible distance = 0 + 0.3844 = 0.3844 Update: 0.3844 < inf Updated distance[E] = 0.3844 Updated previous[E] = A Pushed (0.3844, E) to queue Priority queue now: [(0.3152, 'B'), (0.3844, 'E'), (0.3774, 'F'), (0.5351, 'C')] Step 3: Extract minimum from priority queue Popped node B with distance 0.3152 Mark B as visited Visited set: {'A', 'B'} Checking neighbours of B Inspect edge B -> D (weight 0.3397) New possible distance = 0.3152 + 0.3397 = 0.6549 Update: 0.6549 < inf Updated distance[D] = 0.6549 Updated previous[D] = B Pushed (0.6549, D) to queue Inspect edge B -> A (weight 0.3152) Neighbour A already visited, skipping. Inspect edge B -> C (weight 0.2204) New possible distance = 0.3152 + 0.2204 = 0.5356 No update needed (current best: 0.5351) Inspect edge B -> E (weight 0.3538) New possible distance = 0.3152 + 0.3538 = 0.669 No update needed (current best: 0.3844) Priority queue now: [(0.3774, 'F'), (0.3844, 'E'), (0.5351, 'C'), (0.6549, 'D')] Step 4: Extract minimum from priority queue Popped node F with distance 0.3774 Mark F as visited Visited set: {'A', 'F', 'B'} Checking neighbours of F Inspect edge F -> H (weight 0.6486) New possible distance = 0.3774 + 0.6486 = 1.026 Update: 1.026 < inf Updated distance[H] = 1.026 Updated previous[H] = F Pushed (1.026, H) to queue Inspect edge F -> A (weight 0.3774) Neighbour A already visited, skipping. Inspect edge F -> E (weight 0.4911) New possible distance = 0.3774 + 0.4911 = 0.8685 No update needed (current best: 0.3844) Priority queue now: [(0.3844, 'E'), (0.6549, 'D'), (0.5351, 'C'), (1.026, 'H')] Step 5: Extract minimum from priority queue Popped node E with distance 0.3844 Mark E as visited Visited set: {'A', 'F', 'E', 'B'} Reached target node E, stopping early. Step Final: Reconstruct path Shortest path: A -> E Total distance: 0.3844 </think> <response>The shortest path from A to E is A -> E. Total distance 0.3844.</response>
10
49475351-00b9-45ad-9745-ce1129da34c5
Consider the following edge lengths for an undirected planar graph: C-E 0.6308 D-G 0.3209 C-H 0.2895 B-H 0.2138 E-F 0.509 B-C 0.0786 A-G 0.7662 F-H 0.3012 D-E 0.2968 A-H 0.3721 G-H 1.0214 B-F 0.1274 C-F 0.1328 E-G 0.5215 A-E 0.3876 A-F 0.1365 Determine the shortest path from C to D by implementing Dijkstra’s algorithm and explain each stage in detail.
<think> Step 1: Initialization Initial distances: {'A': inf, 'B': inf, 'C': 0, 'D': inf, 'E': inf, 'F': inf, 'G': inf, 'H': inf} Initial previous: {'A': None, 'B': None, 'C': None, 'D': None, 'E': None, 'F': None, 'G': None, 'H': None} Set distance[C] = 0 Initial priority queue: [(0, 'C')] Step 2: Extract minimum from priority queue Popped node C with distance 0 Mark C as visited Visited set: {'C'} Checking neighbours of C Inspect edge C -> E (weight 0.6308) New possible distance = 0 + 0.6308 = 0.6308 Update: 0.6308 < inf Updated distance[E] = 0.6308 Updated previous[E] = C Pushed (0.6308, E) to queue Inspect edge C -> B (weight 0.0786) New possible distance = 0 + 0.0786 = 0.0786 Update: 0.0786 < inf Updated distance[B] = 0.0786 Updated previous[B] = C Pushed (0.0786, B) to queue Inspect edge C -> H (weight 0.2895) New possible distance = 0 + 0.2895 = 0.2895 Update: 0.2895 < inf Updated distance[H] = 0.2895 Updated previous[H] = C Pushed (0.2895, H) to queue Inspect edge C -> F (weight 0.1328) New possible distance = 0 + 0.1328 = 0.1328 Update: 0.1328 < inf Updated distance[F] = 0.1328 Updated previous[F] = C Pushed (0.1328, F) to queue Priority queue now: [(0.0786, 'B'), (0.1328, 'F'), (0.2895, 'H'), (0.6308, 'E')] Step 3: Extract minimum from priority queue Popped node B with distance 0.0786 Mark B as visited Visited set: {'C', 'B'} Checking neighbours of B Inspect edge B -> C (weight 0.0786) Neighbour C already visited, skipping. Inspect edge B -> F (weight 0.1274) New possible distance = 0.0786 + 0.1274 = 0.20600000000000002 No update needed (current best: 0.1328) Inspect edge B -> H (weight 0.2138) New possible distance = 0.0786 + 0.2138 = 0.2924 No update needed (current best: 0.2895) Priority queue now: [(0.1328, 'F'), (0.6308, 'E'), (0.2895, 'H')] Step 4: Extract minimum from priority queue Popped node F with distance 0.1328 Mark F as visited Visited set: {'C', 'F', 'B'} Checking neighbours of F Inspect edge F -> B (weight 0.1274) Neighbour B already visited, skipping. Inspect edge F -> H (weight 0.3012) New possible distance = 0.1328 + 0.3012 = 0.43400000000000005 No update needed (current best: 0.2895) Inspect edge F -> E (weight 0.509) New possible distance = 0.1328 + 0.509 = 0.6418 No update needed (current best: 0.6308) Inspect edge F -> A (weight 0.1365) New possible distance = 0.1328 + 0.1365 = 0.2693 Update: 0.2693 < inf Updated distance[A] = 0.2693 Updated previous[A] = F Pushed (0.2693, A) to queue Inspect edge F -> C (weight 0.1328) Neighbour C already visited, skipping. Priority queue now: [(0.2693, 'A'), (0.6308, 'E'), (0.2895, 'H')] Step 5: Extract minimum from priority queue Popped node A with distance 0.2693 Mark A as visited Visited set: {'A', 'C', 'F', 'B'} Checking neighbours of A Inspect edge A -> H (weight 0.3721) New possible distance = 0.2693 + 0.3721 = 0.6414 No update needed (current best: 0.2895) Inspect edge A -> E (weight 0.3876) New possible distance = 0.2693 + 0.3876 = 0.6569 No update needed (current best: 0.6308) Inspect edge A -> G (weight 0.7662) New possible distance = 0.2693 + 0.7662 = 1.0354999999999999 Update: 1.0354999999999999 < inf Updated distance[G] = 1.0354999999999999 Updated previous[G] = A Pushed (1.0354999999999999, G) to queue Inspect edge A -> F (weight 0.1365) Neighbour F already visited, skipping. Priority queue now: [(0.2895, 'H'), (0.6308, 'E'), (1.0354999999999999, 'G')] Step 6: Extract minimum from priority queue Popped node H with distance 0.2895 Mark H as visited Visited set: {'A', 'C', 'H', 'B', 'F'} Checking neighbours of H Inspect edge H -> A (weight 0.3721) Neighbour A already visited, skipping. Inspect edge H -> C (weight 0.2895) Neighbour C already visited, skipping. Inspect edge H -> F (weight 0.3012) Neighbour F already visited, skipping. Inspect edge H -> G (weight 1.0214) New possible distance = 0.2895 + 1.0214 = 1.3109000000000002 No update needed (current best: 1.0354999999999999) Inspect edge H -> B (weight 0.2138) Neighbour B already visited, skipping. Priority queue now: [(0.6308, 'E'), (1.0354999999999999, 'G')] Step 7: Extract minimum from priority queue Popped node E with distance 0.6308 Mark E as visited Visited set: {'A', 'C', 'E', 'H', 'B', 'F'} Checking neighbours of E Inspect edge E -> C (weight 0.6308) Neighbour C already visited, skipping. Inspect edge E -> A (weight 0.3876) Neighbour A already visited, skipping. Inspect edge E -> D (weight 0.2968) New possible distance = 0.6308 + 0.2968 = 0.9276 Update: 0.9276 < inf Updated distance[D] = 0.9276 Updated previous[D] = E Pushed (0.9276, D) to queue Inspect edge E -> G (weight 0.5215) New possible distance = 0.6308 + 0.5215 = 1.1522999999999999 No update needed (current best: 1.0354999999999999) Inspect edge E -> F (weight 0.509) Neighbour F already visited, skipping. Priority queue now: [(0.9276, 'D'), (1.0354999999999999, 'G')] Step 8: Extract minimum from priority queue Popped node D with distance 0.9276 Mark D as visited Visited set: {'A', 'D', 'C', 'E', 'H', 'B', 'F'} Reached target node D, stopping early. Step Final: Reconstruct path Shortest path: C -> E -> D Total distance: 0.9276 </think> <response>The shortest path from C to D is C -> E -> D. Total distance 0.9276.</response>
8
e31d78c4-6463-4ee3-961b-e3ebc3fa615f
The edge weights of an undirected planar graph are listed below: B-G 0.0139 D-F 0.1833 C-E 0.4016 B-H 0.2787 F-L 0.2907 C-J 0.1029 I-M 0.0141 E-F 0.1595 F-J 0.4531 H-M 0.376 I-L 0.313 L-M 0.3117 A-E 0.4161 K-L 0.2226 A-J 0.3124 B-D 0.214 H-L 0.3174 B-L 0.3717 A-C 0.2276 D-L 0.2655 I-J 0.6816 K-M 0.2189 J-L 0.5277 H-K 0.1627 D-E 0.2909 E-G 0.4763 D-G 0.2032 C-F 0.392 Find the shortest path connecting M and L using Dijkstra’s method, and outline every step clearly.
<think> Step 1: Initialization Initial distances: {'A': inf, 'B': inf, 'C': inf, 'D': inf, 'E': inf, 'F': inf, 'G': inf, 'H': inf, 'I': inf, 'J': inf, 'K': inf, 'L': inf, 'M': 0} Initial previous: {'A': None, 'B': None, 'C': None, 'D': None, 'E': None, 'F': None, 'G': None, 'H': None, 'I': None, 'J': None, 'K': None, 'L': None, 'M': None} Set distance[M] = 0 Initial priority queue: [(0, 'M')] Step 2: Extract minimum from priority queue Popped node M with distance 0 Mark M as visited Visited set: {'M'} Checking neighbours of M Inspect edge M -> I (weight 0.0141) New possible distance = 0 + 0.0141 = 0.0141 Update: 0.0141 < inf Updated distance[I] = 0.0141 Updated previous[I] = M Pushed (0.0141, I) to queue Inspect edge M -> K (weight 0.2189) New possible distance = 0 + 0.2189 = 0.2189 Update: 0.2189 < inf Updated distance[K] = 0.2189 Updated previous[K] = M Pushed (0.2189, K) to queue Inspect edge M -> H (weight 0.376) New possible distance = 0 + 0.376 = 0.376 Update: 0.376 < inf Updated distance[H] = 0.376 Updated previous[H] = M Pushed (0.376, H) to queue Inspect edge M -> L (weight 0.3117) New possible distance = 0 + 0.3117 = 0.3117 Update: 0.3117 < inf Updated distance[L] = 0.3117 Updated previous[L] = M Pushed (0.3117, L) to queue Priority queue now: [(0.0141, 'I'), (0.2189, 'K'), (0.376, 'H'), (0.3117, 'L')] Step 3: Extract minimum from priority queue Popped node I with distance 0.0141 Mark I as visited Visited set: {'I', 'M'} Checking neighbours of I Inspect edge I -> J (weight 0.6816) New possible distance = 0.0141 + 0.6816 = 0.6957 Update: 0.6957 < inf Updated distance[J] = 0.6957 Updated previous[J] = I Pushed (0.6957, J) to queue Inspect edge I -> M (weight 0.0141) Neighbour M already visited, skipping. Inspect edge I -> L (weight 0.313) New possible distance = 0.0141 + 0.313 = 0.3271 No update needed (current best: 0.3117) Priority queue now: [(0.2189, 'K'), (0.3117, 'L'), (0.376, 'H'), (0.6957, 'J')] Step 4: Extract minimum from priority queue Popped node K with distance 0.2189 Mark K as visited Visited set: {'I', 'K', 'M'} Checking neighbours of K Inspect edge K -> M (weight 0.2189) Neighbour M already visited, skipping. Inspect edge K -> H (weight 0.1627) New possible distance = 0.2189 + 0.1627 = 0.38160000000000005 No update needed (current best: 0.376) Inspect edge K -> L (weight 0.2226) New possible distance = 0.2189 + 0.2226 = 0.4415 No update needed (current best: 0.3117) Priority queue now: [(0.3117, 'L'), (0.6957, 'J'), (0.376, 'H')] Step 5: Extract minimum from priority queue Popped node L with distance 0.3117 Mark L as visited Visited set: {'I', 'L', 'K', 'M'} Reached target node L, stopping early. Step Final: Reconstruct path Shortest path: M -> L Total distance: 0.3117 </think> <response>The shortest path from M to L is M -> L. Total distance 0.3117.</response>
13
3fb34a31-2000-447b-801c-e0f760e564a1
The following data gives the edge weights of an undirected planar graph: A-B 0.1878 B-C 0.3481 A-D 0.2664 B-D 0.3272 A-C 0.5298 C-D 0.6416 Use Dijkstra’s algorithm to solve for the shortest path from A to D, explaining each step clearly and systematically.
<think> Step 1: Initialization Initial distances: {'A': 0, 'B': inf, 'C': inf, 'D': inf} Initial previous: {'A': None, 'B': None, 'C': None, 'D': None} Set distance[A] = 0 Initial priority queue: [(0, 'A')] Step 2: Extract minimum from priority queue Popped node A with distance 0 Mark A as visited Visited set: {'A'} Checking neighbours of A Inspect edge A -> B (weight 0.1878) New possible distance = 0 + 0.1878 = 0.1878 Update: 0.1878 < inf Updated distance[B] = 0.1878 Updated previous[B] = A Pushed (0.1878, B) to queue Inspect edge A -> D (weight 0.2664) New possible distance = 0 + 0.2664 = 0.2664 Update: 0.2664 < inf Updated distance[D] = 0.2664 Updated previous[D] = A Pushed (0.2664, D) to queue Inspect edge A -> C (weight 0.5298) New possible distance = 0 + 0.5298 = 0.5298 Update: 0.5298 < inf Updated distance[C] = 0.5298 Updated previous[C] = A Pushed (0.5298, C) to queue Priority queue now: [(0.1878, 'B'), (0.2664, 'D'), (0.5298, 'C')] Step 3: Extract minimum from priority queue Popped node B with distance 0.1878 Mark B as visited Visited set: {'A', 'B'} Checking neighbours of B Inspect edge B -> A (weight 0.1878) Neighbour A already visited, skipping. Inspect edge B -> C (weight 0.3481) New possible distance = 0.1878 + 0.3481 = 0.5359 No update needed (current best: 0.5298) Inspect edge B -> D (weight 0.3272) New possible distance = 0.1878 + 0.3272 = 0.515 No update needed (current best: 0.2664) Priority queue now: [(0.2664, 'D'), (0.5298, 'C')] Step 4: Extract minimum from priority queue Popped node D with distance 0.2664 Mark D as visited Visited set: {'A', 'D', 'B'} Reached target node D, stopping early. Step Final: Reconstruct path Shortest path: A -> D Total distance: 0.2664 </think> <response>The shortest path from A to D is A -> D. Total distance 0.2664.</response>
4
64454f4a-270b-4e8e-bf9c-cd7f47606403
Consider the following edge lengths for an undirected planar graph: C-E 0.3435 C-G 0.5628 D-I 0.2437 C-F 0.2897 F-H 0.3536 A-B 0.2089 A-F 0.2699 A-I 0.4289 D-J 0.6123 G-J 0.2472 E-F 0.2782 B-F 0.3414 C-J 0.3395 A-H 0.2412 C-H 0.4704 H-J 0.359 B-I 0.5966 D-H 0.4566 H-I 0.3175 D-G 0.6229 B-E 0.5133 Determine the shortest path from A to C by implementing Dijkstra’s algorithm and explain each stage in detail.
<think> Step 1: Initialization Initial distances: {'A': 0, 'B': inf, 'C': inf, 'D': inf, 'E': inf, 'F': inf, 'G': inf, 'H': inf, 'I': inf, 'J': inf} Initial previous: {'A': None, 'B': None, 'C': None, 'D': None, 'E': None, 'F': None, 'G': None, 'H': None, 'I': None, 'J': None} Set distance[A] = 0 Initial priority queue: [(0, 'A')] Step 2: Extract minimum from priority queue Popped node A with distance 0 Mark A as visited Visited set: {'A'} Checking neighbours of A Inspect edge A -> F (weight 0.2699) New possible distance = 0 + 0.2699 = 0.2699 Update: 0.2699 < inf Updated distance[F] = 0.2699 Updated previous[F] = A Pushed (0.2699, F) to queue Inspect edge A -> I (weight 0.4289) New possible distance = 0 + 0.4289 = 0.4289 Update: 0.4289 < inf Updated distance[I] = 0.4289 Updated previous[I] = A Pushed (0.4289, I) to queue Inspect edge A -> B (weight 0.2089) New possible distance = 0 + 0.2089 = 0.2089 Update: 0.2089 < inf Updated distance[B] = 0.2089 Updated previous[B] = A Pushed (0.2089, B) to queue Inspect edge A -> H (weight 0.2412) New possible distance = 0 + 0.2412 = 0.2412 Update: 0.2412 < inf Updated distance[H] = 0.2412 Updated previous[H] = A Pushed (0.2412, H) to queue Priority queue now: [(0.2089, 'B'), (0.2412, 'H'), (0.2699, 'F'), (0.4289, 'I')] Step 3: Extract minimum from priority queue Popped node B with distance 0.2089 Mark B as visited Visited set: {'A', 'B'} Checking neighbours of B Inspect edge B -> A (weight 0.2089) Neighbour A already visited, skipping. Inspect edge B -> F (weight 0.3414) New possible distance = 0.2089 + 0.3414 = 0.5503 No update needed (current best: 0.2699) Inspect edge B -> I (weight 0.5966) New possible distance = 0.2089 + 0.5966 = 0.8055 No update needed (current best: 0.4289) Inspect edge B -> E (weight 0.5133) New possible distance = 0.2089 + 0.5133 = 0.7222 Update: 0.7222 < inf Updated distance[E] = 0.7222 Updated previous[E] = B Pushed (0.7222, E) to queue Priority queue now: [(0.2412, 'H'), (0.4289, 'I'), (0.2699, 'F'), (0.7222, 'E')] Step 4: Extract minimum from priority queue Popped node H with distance 0.2412 Mark H as visited Visited set: {'A', 'H', 'B'} Checking neighbours of H Inspect edge H -> D (weight 0.4566) New possible distance = 0.2412 + 0.4566 = 0.6978 Update: 0.6978 < inf Updated distance[D] = 0.6978 Updated previous[D] = H Pushed (0.6978, D) to queue Inspect edge H -> F (weight 0.3536) New possible distance = 0.2412 + 0.3536 = 0.5948 No update needed (current best: 0.2699) Inspect edge H -> A (weight 0.2412) Neighbour A already visited, skipping. Inspect edge H -> C (weight 0.4704) New possible distance = 0.2412 + 0.4704 = 0.7116 Update: 0.7116 < inf Updated distance[C] = 0.7116 Updated previous[C] = H Pushed (0.7116, C) to queue Inspect edge H -> J (weight 0.359) New possible distance = 0.2412 + 0.359 = 0.6002 Update: 0.6002 < inf Updated distance[J] = 0.6002 Updated previous[J] = H Pushed (0.6002, J) to queue Inspect edge H -> I (weight 0.3175) New possible distance = 0.2412 + 0.3175 = 0.5587 No update needed (current best: 0.4289) Priority queue now: [(0.2699, 'F'), (0.4289, 'I'), (0.6002, 'J'), (0.6978, 'D'), (0.7116, 'C'), (0.7222, 'E')] Step 5: Extract minimum from priority queue Popped node F with distance 0.2699 Mark F as visited Visited set: {'A', 'F', 'H', 'B'} Checking neighbours of F Inspect edge F -> H (weight 0.3536) Neighbour H already visited, skipping. Inspect edge F -> A (weight 0.2699) Neighbour A already visited, skipping. Inspect edge F -> C (weight 0.2897) New possible distance = 0.2699 + 0.2897 = 0.5596 Update: 0.5596 < 0.7116 Updated distance[C] = 0.5596 Updated previous[C] = F Pushed (0.5596, C) to queue Inspect edge F -> E (weight 0.2782) New possible distance = 0.2699 + 0.2782 = 0.5481 Update: 0.5481 < 0.7222 Updated distance[E] = 0.5481 Updated previous[E] = F Pushed (0.5481, E) to queue Inspect edge F -> B (weight 0.3414) Neighbour B already visited, skipping. Priority queue now: [(0.4289, 'I'), (0.6978, 'D'), (0.5481, 'E'), (0.7222, 'E'), (0.7116, 'C'), (0.6002, 'J'), (0.5596, 'C')] Step 6: Extract minimum from priority queue Popped node I with distance 0.4289 Mark I as visited Visited set: {'A', 'H', 'B', 'I', 'F'} Checking neighbours of I Inspect edge I -> A (weight 0.4289) Neighbour A already visited, skipping. Inspect edge I -> B (weight 0.5966) Neighbour B already visited, skipping. Inspect edge I -> D (weight 0.2437) New possible distance = 0.4289 + 0.2437 = 0.6726 Update: 0.6726 < 0.6978 Updated distance[D] = 0.6726 Updated previous[D] = I Pushed (0.6726, D) to queue Inspect edge I -> H (weight 0.3175) Neighbour H already visited, skipping. Priority queue now: [(0.5481, 'E'), (0.6978, 'D'), (0.5596, 'C'), (0.7222, 'E'), (0.7116, 'C'), (0.6002, 'J'), (0.6726, 'D')] Step 7: Extract minimum from priority queue Popped node E with distance 0.5481 Mark E as visited Visited set: {'A', 'E', 'H', 'B', 'I', 'F'} Checking neighbours of E Inspect edge E -> F (weight 0.2782) Neighbour F already visited, skipping. Inspect edge E -> C (weight 0.3435) New possible distance = 0.5481 + 0.3435 = 0.8916000000000001 No update needed (current best: 0.5596) Inspect edge E -> B (weight 0.5133) Neighbour B already visited, skipping. Priority queue now: [(0.5596, 'C'), (0.6978, 'D'), (0.6002, 'J'), (0.7222, 'E'), (0.7116, 'C'), (0.6726, 'D')] Step 8: Extract minimum from priority queue Popped node C with distance 0.5596 Mark C as visited Visited set: {'A', 'E', 'C', 'H', 'B', 'I', 'F'} Reached target node C, stopping early. Step Final: Reconstruct path Shortest path: A -> F -> C Total distance: 0.5596 </think> <response>The shortest path from A to C is A -> F -> C. Total distance 0.5596.</response>
10
733b851f-0d71-4cc6-b971-84f0da101744
The edge weights of an undirected planar graph are listed below: D-E 0.8215 B-D 0.1178 A-F 0.1505 C-F 0.7109 B-E 0.7039 C-D 0.0895 E-F 0.1056 B-F 0.6137 B-C 0.1278 A-E 0.0536 Find the shortest path connecting F and D using Dijkstra’s method, and outline every step clearly.
<think> Step 1: Initialization Initial distances: {'A': inf, 'B': inf, 'C': inf, 'D': inf, 'E': inf, 'F': 0} Initial previous: {'A': None, 'B': None, 'C': None, 'D': None, 'E': None, 'F': None} Set distance[F] = 0 Initial priority queue: [(0, 'F')] Step 2: Extract minimum from priority queue Popped node F with distance 0 Mark F as visited Visited set: {'F'} Checking neighbours of F Inspect edge F -> B (weight 0.6137) New possible distance = 0 + 0.6137 = 0.6137 Update: 0.6137 < inf Updated distance[B] = 0.6137 Updated previous[B] = F Pushed (0.6137, B) to queue Inspect edge F -> E (weight 0.1056) New possible distance = 0 + 0.1056 = 0.1056 Update: 0.1056 < inf Updated distance[E] = 0.1056 Updated previous[E] = F Pushed (0.1056, E) to queue Inspect edge F -> A (weight 0.1505) New possible distance = 0 + 0.1505 = 0.1505 Update: 0.1505 < inf Updated distance[A] = 0.1505 Updated previous[A] = F Pushed (0.1505, A) to queue Inspect edge F -> C (weight 0.7109) New possible distance = 0 + 0.7109 = 0.7109 Update: 0.7109 < inf Updated distance[C] = 0.7109 Updated previous[C] = F Pushed (0.7109, C) to queue Priority queue now: [(0.1056, 'E'), (0.6137, 'B'), (0.1505, 'A'), (0.7109, 'C')] Step 3: Extract minimum from priority queue Popped node E with distance 0.1056 Mark E as visited Visited set: {'F', 'E'} Checking neighbours of E Inspect edge E -> A (weight 0.0536) New possible distance = 0.1056 + 0.0536 = 0.1592 No update needed (current best: 0.1505) Inspect edge E -> D (weight 0.8215) New possible distance = 0.1056 + 0.8215 = 0.9271 Update: 0.9271 < inf Updated distance[D] = 0.9271 Updated previous[D] = E Pushed (0.9271, D) to queue Inspect edge E -> B (weight 0.7039) New possible distance = 0.1056 + 0.7039 = 0.8095 No update needed (current best: 0.6137) Inspect edge E -> F (weight 0.1056) Neighbour F already visited, skipping. Priority queue now: [(0.1505, 'A'), (0.6137, 'B'), (0.7109, 'C'), (0.9271, 'D')] Step 4: Extract minimum from priority queue Popped node A with distance 0.1505 Mark A as visited Visited set: {'F', 'A', 'E'} Checking neighbours of A Inspect edge A -> E (weight 0.0536) Neighbour E already visited, skipping. Inspect edge A -> F (weight 0.1505) Neighbour F already visited, skipping. Priority queue now: [(0.6137, 'B'), (0.9271, 'D'), (0.7109, 'C')] Step 5: Extract minimum from priority queue Popped node B with distance 0.6137 Mark B as visited Visited set: {'F', 'A', 'E', 'B'} Checking neighbours of B Inspect edge B -> C (weight 0.1278) New possible distance = 0.6137 + 0.1278 = 0.7415 No update needed (current best: 0.7109) Inspect edge B -> F (weight 0.6137) Neighbour F already visited, skipping. Inspect edge B -> E (weight 0.7039) Neighbour E already visited, skipping. Inspect edge B -> D (weight 0.1178) New possible distance = 0.6137 + 0.1178 = 0.7315 Update: 0.7315 < 0.9271 Updated distance[D] = 0.7315 Updated previous[D] = B Pushed (0.7315, D) to queue Priority queue now: [(0.7109, 'C'), (0.9271, 'D'), (0.7315, 'D')] Step 6: Extract minimum from priority queue Popped node C with distance 0.7109 Mark C as visited Visited set: {'A', 'C', 'E', 'B', 'F'} Checking neighbours of C Inspect edge C -> B (weight 0.1278) Neighbour B already visited, skipping. Inspect edge C -> D (weight 0.0895) New possible distance = 0.7109 + 0.0895 = 0.8004 No update needed (current best: 0.7315) Inspect edge C -> F (weight 0.7109) Neighbour F already visited, skipping. Priority queue now: [(0.7315, 'D'), (0.9271, 'D')] Step 7: Extract minimum from priority queue Popped node D with distance 0.7315 Mark D as visited Visited set: {'A', 'D', 'C', 'E', 'B', 'F'} Reached target node D, stopping early. Step Final: Reconstruct path Shortest path: F -> B -> D Total distance: 0.7315 </think> <response>The shortest path from F to D is F -> B -> D. Total distance 0.7315.</response>
6
0c9e8ab3-1a23-4916-b513-7076dbfd7d12
An undirected planar graph has the following edge lengths: B-D 0.4508 A-D 0.3758 D-E 0.2827 B-C 0.8829 C-E 0.275 A-F 0.1565 B-F 0.1774 A-E 0.6514 C-D 0.5202 D-F 0.3476 A-B 0.3276 Using Dijkstra’s algorithm, identify the shortest path between D and B and present a comprehensive step-by-step explanation.
<think> Step 1: Initialization Initial distances: {'A': inf, 'B': inf, 'C': inf, 'D': 0, 'E': inf, 'F': inf} Initial previous: {'A': None, 'B': None, 'C': None, 'D': None, 'E': None, 'F': None} Set distance[D] = 0 Initial priority queue: [(0, 'D')] Step 2: Extract minimum from priority queue Popped node D with distance 0 Mark D as visited Visited set: {'D'} Checking neighbours of D Inspect edge D -> E (weight 0.2827) New possible distance = 0 + 0.2827 = 0.2827 Update: 0.2827 < inf Updated distance[E] = 0.2827 Updated previous[E] = D Pushed (0.2827, E) to queue Inspect edge D -> A (weight 0.3758) New possible distance = 0 + 0.3758 = 0.3758 Update: 0.3758 < inf Updated distance[A] = 0.3758 Updated previous[A] = D Pushed (0.3758, A) to queue Inspect edge D -> C (weight 0.5202) New possible distance = 0 + 0.5202 = 0.5202 Update: 0.5202 < inf Updated distance[C] = 0.5202 Updated previous[C] = D Pushed (0.5202, C) to queue Inspect edge D -> B (weight 0.4508) New possible distance = 0 + 0.4508 = 0.4508 Update: 0.4508 < inf Updated distance[B] = 0.4508 Updated previous[B] = D Pushed (0.4508, B) to queue Inspect edge D -> F (weight 0.3476) New possible distance = 0 + 0.3476 = 0.3476 Update: 0.3476 < inf Updated distance[F] = 0.3476 Updated previous[F] = D Pushed (0.3476, F) to queue Priority queue now: [(0.2827, 'E'), (0.3476, 'F'), (0.5202, 'C'), (0.4508, 'B'), (0.3758, 'A')] Step 3: Extract minimum from priority queue Popped node E with distance 0.2827 Mark E as visited Visited set: {'D', 'E'} Checking neighbours of E Inspect edge E -> C (weight 0.275) New possible distance = 0.2827 + 0.275 = 0.5577000000000001 No update needed (current best: 0.5202) Inspect edge E -> A (weight 0.6514) New possible distance = 0.2827 + 0.6514 = 0.9340999999999999 No update needed (current best: 0.3758) Inspect edge E -> D (weight 0.2827) Neighbour D already visited, skipping. Priority queue now: [(0.3476, 'F'), (0.3758, 'A'), (0.5202, 'C'), (0.4508, 'B')] Step 4: Extract minimum from priority queue Popped node F with distance 0.3476 Mark F as visited Visited set: {'D', 'F', 'E'} Checking neighbours of F Inspect edge F -> B (weight 0.1774) New possible distance = 0.3476 + 0.1774 = 0.525 No update needed (current best: 0.4508) Inspect edge F -> A (weight 0.1565) New possible distance = 0.3476 + 0.1565 = 0.5041 No update needed (current best: 0.3758) Inspect edge F -> D (weight 0.3476) Neighbour D already visited, skipping. Priority queue now: [(0.3758, 'A'), (0.4508, 'B'), (0.5202, 'C')] Step 5: Extract minimum from priority queue Popped node A with distance 0.3758 Mark A as visited Visited set: {'A', 'D', 'F', 'E'} Checking neighbours of A Inspect edge A -> B (weight 0.3276) New possible distance = 0.3758 + 0.3276 = 0.7034 No update needed (current best: 0.4508) Inspect edge A -> E (weight 0.6514) Neighbour E already visited, skipping. Inspect edge A -> D (weight 0.3758) Neighbour D already visited, skipping. Inspect edge A -> F (weight 0.1565) Neighbour F already visited, skipping. Priority queue now: [(0.4508, 'B'), (0.5202, 'C')] Step 6: Extract minimum from priority queue Popped node B with distance 0.4508 Mark B as visited Visited set: {'A', 'D', 'E', 'B', 'F'} Reached target node B, stopping early. Step Final: Reconstruct path Shortest path: D -> B Total distance: 0.4508 </think> <response>The shortest path from D to B is D -> B. Total distance 0.4508.</response>
6
07e0b2e5-af17-49d8-be76-d1893f3923d8
Below are the edge weights for an undirected planar graph: F-P 0.4107 E-I 0.3509 B-N 0.355 G-L 0.3273 A-E 0.1702 M-P 0.4801 B-K 0.6682 A-O 0.3519 E-H 0.2336 G-N 0.2812 B-P 0.3388 C-E 0.2305 N-Q 0.3035 G-Q 0.2616 F-J 0.1348 F-O 0.0977 A-D 0.3747 K-N 0.3133 G-H 0.1984 J-M 0.1051 L-Q 0.3185 P-Q 0.178 C-L 0.2187 A-C 0.2312 B-M 0.6722 F-Q 0.3302 D-J 0.1304 H-I 0.1176 H-L 0.2095 C-Q 0.1919 C-O 0.2538 F-M 0.0947 N-P 0.1879 C-F 0.2603 G-I 0.1965 I-K 0.1901 J-O 0.0878 G-K 0.142 E-L 0.0331 D-O 0.1553 Apply Dijkstra’s algorithm to compute the shortest route from E to M, providing a detailed explanation of every step.
<think> Step 1: Initialization Initial distances: {'A': inf, 'B': inf, 'C': inf, 'D': inf, 'E': 0, 'F': inf, 'G': inf, 'H': inf, 'I': inf, 'J': inf, 'K': inf, 'L': inf, 'M': inf, 'N': inf, 'O': inf, 'P': inf, 'Q': inf} Initial previous: {'A': None, 'B': None, 'C': None, 'D': None, 'E': None, 'F': None, 'G': None, 'H': None, 'I': None, 'J': None, 'K': None, 'L': None, 'M': None, 'N': None, 'O': None, 'P': None, 'Q': None} Set distance[E] = 0 Initial priority queue: [(0, 'E')] Step 2: Extract minimum from priority queue Popped node E with distance 0 Mark E as visited Visited set: {'E'} Checking neighbours of E Inspect edge E -> I (weight 0.3509) New possible distance = 0 + 0.3509 = 0.3509 Update: 0.3509 < inf Updated distance[I] = 0.3509 Updated previous[I] = E Pushed (0.3509, I) to queue Inspect edge E -> L (weight 0.0331) New possible distance = 0 + 0.0331 = 0.0331 Update: 0.0331 < inf Updated distance[L] = 0.0331 Updated previous[L] = E Pushed (0.0331, L) to queue Inspect edge E -> C (weight 0.2305) New possible distance = 0 + 0.2305 = 0.2305 Update: 0.2305 < inf Updated distance[C] = 0.2305 Updated previous[C] = E Pushed (0.2305, C) to queue Inspect edge E -> A (weight 0.1702) New possible distance = 0 + 0.1702 = 0.1702 Update: 0.1702 < inf Updated distance[A] = 0.1702 Updated previous[A] = E Pushed (0.1702, A) to queue Inspect edge E -> H (weight 0.2336) New possible distance = 0 + 0.2336 = 0.2336 Update: 0.2336 < inf Updated distance[H] = 0.2336 Updated previous[H] = E Pushed (0.2336, H) to queue Priority queue now: [(0.0331, 'L'), (0.1702, 'A'), (0.2305, 'C'), (0.3509, 'I'), (0.2336, 'H')] Step 3: Extract minimum from priority queue Popped node L with distance 0.0331 Mark L as visited Visited set: {'L', 'E'} Checking neighbours of L Inspect edge L -> C (weight 0.2187) New possible distance = 0.0331 + 0.2187 = 0.2518 No update needed (current best: 0.2305) Inspect edge L -> G (weight 0.3273) New possible distance = 0.0331 + 0.3273 = 0.3604 Update: 0.3604 < inf Updated distance[G] = 0.3604 Updated previous[G] = L Pushed (0.3604, G) to queue Inspect edge L -> E (weight 0.0331) Neighbour E already visited, skipping. Inspect edge L -> Q (weight 0.3185) New possible distance = 0.0331 + 0.3185 = 0.3516 Update: 0.3516 < inf Updated distance[Q] = 0.3516 Updated previous[Q] = L Pushed (0.3516, Q) to queue Inspect edge L -> H (weight 0.2095) New possible distance = 0.0331 + 0.2095 = 0.24259999999999998 No update needed (current best: 0.2336) Priority queue now: [(0.1702, 'A'), (0.2336, 'H'), (0.2305, 'C'), (0.3509, 'I'), (0.3604, 'G'), (0.3516, 'Q')] Step 4: Extract minimum from priority queue Popped node A with distance 0.1702 Mark A as visited Visited set: {'L', 'E', 'A'} Checking neighbours of A Inspect edge A -> C (weight 0.2312) New possible distance = 0.1702 + 0.2312 = 0.4014 No update needed (current best: 0.2305) Inspect edge A -> O (weight 0.3519) New possible distance = 0.1702 + 0.3519 = 0.5221 Update: 0.5221 < inf Updated distance[O] = 0.5221 Updated previous[O] = A Pushed (0.5221, O) to queue Inspect edge A -> E (weight 0.1702) Neighbour E already visited, skipping. Inspect edge A -> D (weight 0.3747) New possible distance = 0.1702 + 0.3747 = 0.5448999999999999 Update: 0.5448999999999999 < inf Updated distance[D] = 0.5448999999999999 Updated previous[D] = A Pushed (0.5448999999999999, D) to queue Priority queue now: [(0.2305, 'C'), (0.2336, 'H'), (0.3516, 'Q'), (0.3509, 'I'), (0.3604, 'G'), (0.5221, 'O'), (0.5448999999999999, 'D')] Step 5: Extract minimum from priority queue Popped node C with distance 0.2305 Mark C as visited Visited set: {'C', 'L', 'E', 'A'} Checking neighbours of C Inspect edge C -> A (weight 0.2312) Neighbour A already visited, skipping. Inspect edge C -> F (weight 0.2603) New possible distance = 0.2305 + 0.2603 = 0.4908 Update: 0.4908 < inf Updated distance[F] = 0.4908 Updated previous[F] = C Pushed (0.4908, F) to queue Inspect edge C -> L (weight 0.2187) Neighbour L already visited, skipping. Inspect edge C -> O (weight 0.2538) New possible distance = 0.2305 + 0.2538 = 0.48430000000000006 Update: 0.48430000000000006 < 0.5221 Updated distance[O] = 0.48430000000000006 Updated previous[O] = C Pushed (0.48430000000000006, O) to queue Inspect edge C -> E (weight 0.2305) Neighbour E already visited, skipping. Inspect edge C -> Q (weight 0.1919) New possible distance = 0.2305 + 0.1919 = 0.4224 No update needed (current best: 0.3516) Priority queue now: [(0.2336, 'H'), (0.3509, 'I'), (0.3516, 'Q'), (0.48430000000000006, 'O'), (0.3604, 'G'), (0.5221, 'O'), (0.4908, 'F'), (0.5448999999999999, 'D')] Step 6: Extract minimum from priority queue Popped node H with distance 0.2336 Mark H as visited Visited set: {'A', 'L', 'C', 'E', 'H'} Checking neighbours of H Inspect edge H -> G (weight 0.1984) New possible distance = 0.2336 + 0.1984 = 0.432 No update needed (current best: 0.3604) Inspect edge H -> E (weight 0.2336) Neighbour E already visited, skipping. Inspect edge H -> L (weight 0.2095) Neighbour L already visited, skipping. Inspect edge H -> I (weight 0.1176) New possible distance = 0.2336 + 0.1176 = 0.3512 No update needed (current best: 0.3509) Priority queue now: [(0.3509, 'I'), (0.3604, 'G'), (0.3516, 'Q'), (0.48430000000000006, 'O'), (0.5448999999999999, 'D'), (0.5221, 'O'), (0.4908, 'F')] Step 7: Extract minimum from priority queue Popped node I with distance 0.3509 Mark I as visited Visited set: {'A', 'L', 'C', 'E', 'H', 'I'} Checking neighbours of I Inspect edge I -> G (weight 0.1965) New possible distance = 0.3509 + 0.1965 = 0.5474 No update needed (current best: 0.3604) Inspect edge I -> E (weight 0.3509) Neighbour E already visited, skipping. Inspect edge I -> K (weight 0.1901) New possible distance = 0.3509 + 0.1901 = 0.5409999999999999 Update: 0.5409999999999999 < inf Updated distance[K] = 0.5409999999999999 Updated previous[K] = I Pushed (0.5409999999999999, K) to queue Inspect edge I -> H (weight 0.1176) Neighbour H already visited, skipping. Priority queue now: [(0.3516, 'Q'), (0.3604, 'G'), (0.4908, 'F'), (0.48430000000000006, 'O'), (0.5448999999999999, 'D'), (0.5221, 'O'), (0.5409999999999999, 'K')] Step 8: Extract minimum from priority queue Popped node Q with distance 0.3516 Mark Q as visited Visited set: {'A', 'L', 'Q', 'C', 'E', 'H', 'I'} Checking neighbours of Q Inspect edge Q -> F (weight 0.3302) New possible distance = 0.3516 + 0.3302 = 0.6818 No update needed (current best: 0.4908) Inspect edge Q -> L (weight 0.3185) Neighbour L already visited, skipping. Inspect edge Q -> C (weight 0.1919) Neighbour C already visited, skipping. Inspect edge Q -> N (weight 0.3035) New possible distance = 0.3516 + 0.3035 = 0.6551 Update: 0.6551 < inf Updated distance[N] = 0.6551 Updated previous[N] = Q Pushed (0.6551, N) to queue Inspect edge Q -> P (weight 0.178) New possible distance = 0.3516 + 0.178 = 0.5296000000000001 Update: 0.5296000000000001 < inf Updated distance[P] = 0.5296000000000001 Updated previous[P] = Q Pushed (0.5296000000000001, P) to queue Inspect edge Q -> G (weight 0.2616) New possible distance = 0.3516 + 0.2616 = 0.6132 No update needed (current best: 0.3604) Priority queue now: [(0.3604, 'G'), (0.48430000000000006, 'O'), (0.4908, 'F'), (0.5296000000000001, 'P'), (0.5448999999999999, 'D'), (0.5221, 'O'), (0.6551, 'N'), (0.5409999999999999, 'K')] Step 9: Extract minimum from priority queue Popped node G with distance 0.3604 Mark G as visited Visited set: {'A', 'L', 'Q', 'C', 'E', 'H', 'G', 'I'} Checking neighbours of G Inspect edge G -> L (weight 0.3273) Neighbour L already visited, skipping. Inspect edge G -> I (weight 0.1965) Neighbour I already visited, skipping. Inspect edge G -> N (weight 0.2812) New possible distance = 0.3604 + 0.2812 = 0.6416 Update: 0.6416 < 0.6551 Updated distance[N] = 0.6416 Updated previous[N] = G Pushed (0.6416, N) to queue Inspect edge G -> H (weight 0.1984) Neighbour H already visited, skipping. Inspect edge G -> K (weight 0.142) New possible distance = 0.3604 + 0.142 = 0.5024 Update: 0.5024 < 0.5409999999999999 Updated distance[K] = 0.5024 Updated previous[K] = G Pushed (0.5024, K) to queue Inspect edge G -> Q (weight 0.2616) Neighbour Q already visited, skipping. Priority queue now: [(0.48430000000000006, 'O'), (0.5024, 'K'), (0.4908, 'F'), (0.5296000000000001, 'P'), (0.5448999999999999, 'D'), (0.5221, 'O'), (0.6551, 'N'), (0.6416, 'N'), (0.5409999999999999, 'K')] Step 10: Extract minimum from priority queue Popped node O with distance 0.48430000000000006 Mark O as visited Visited set: {'A', 'L', 'Q', 'C', 'E', 'H', 'G', 'I', 'O'} Checking neighbours of O Inspect edge O -> J (weight 0.0878) New possible distance = 0.48430000000000006 + 0.0878 = 0.5721 Update: 0.5721 < inf Updated distance[J] = 0.5721 Updated previous[J] = O Pushed (0.5721, J) to queue Inspect edge O -> A (weight 0.3519) Neighbour A already visited, skipping. Inspect edge O -> C (weight 0.2538) Neighbour C already visited, skipping. Inspect edge O -> D (weight 0.1553) New possible distance = 0.48430000000000006 + 0.1553 = 0.6396000000000001 No update needed (current best: 0.5448999999999999) Inspect edge O -> F (weight 0.0977) New possible distance = 0.48430000000000006 + 0.0977 = 0.5820000000000001 No update needed (current best: 0.4908) Priority queue now: [(0.4908, 'F'), (0.5024, 'K'), (0.5221, 'O'), (0.5296000000000001, 'P'), (0.5448999999999999, 'D'), (0.5409999999999999, 'K'), (0.6551, 'N'), (0.6416, 'N'), (0.5721, 'J')] Step 11: Extract minimum from priority queue Popped node F with distance 0.4908 Mark F as visited Visited set: {'A', 'L', 'Q', 'C', 'E', 'H', 'G', 'I', 'O', 'F'} Checking neighbours of F Inspect edge F -> Q (weight 0.3302) Neighbour Q already visited, skipping. Inspect edge F -> C (weight 0.2603) Neighbour C already visited, skipping. Inspect edge F -> J (weight 0.1348) New possible distance = 0.4908 + 0.1348 = 0.6256 No update needed (current best: 0.5721) Inspect edge F -> M (weight 0.0947) New possible distance = 0.4908 + 0.0947 = 0.5855 Update: 0.5855 < inf Updated distance[M] = 0.5855 Updated previous[M] = F Pushed (0.5855, M) to queue Inspect edge F -> P (weight 0.4107) New possible distance = 0.4908 + 0.4107 = 0.9015 No update needed (current best: 0.5296000000000001) Inspect edge F -> O (weight 0.0977) Neighbour O already visited, skipping. Priority queue now: [(0.5024, 'K'), (0.5296000000000001, 'P'), (0.5221, 'O'), (0.5721, 'J'), (0.5448999999999999, 'D'), (0.5409999999999999, 'K'), (0.6551, 'N'), (0.6416, 'N'), (0.5855, 'M')] Step 12: Extract minimum from priority queue Popped node K with distance 0.5024 Mark K as visited Visited set: {'K', 'A', 'L', 'Q', 'C', 'E', 'H', 'G', 'I', 'O', 'F'} Checking neighbours of K Inspect edge K -> G (weight 0.142) Neighbour G already visited, skipping. Inspect edge K -> I (weight 0.1901) Neighbour I already visited, skipping. Inspect edge K -> N (weight 0.3133) New possible distance = 0.5024 + 0.3133 = 0.8157 No update needed (current best: 0.6416) Inspect edge K -> B (weight 0.6682) New possible distance = 0.5024 + 0.6682 = 1.1705999999999999 Update: 1.1705999999999999 < inf Updated distance[B] = 1.1705999999999999 Updated previous[B] = K Pushed (1.1705999999999999, B) to queue Priority queue now: [(0.5221, 'O'), (0.5296000000000001, 'P'), (0.5409999999999999, 'K'), (0.5721, 'J'), (0.5448999999999999, 'D'), (0.5855, 'M'), (0.6551, 'N'), (0.6416, 'N'), (1.1705999999999999, 'B')] Step 13: Extract minimum from priority queue Popped node O with distance 0.5221 Node O already visited, skipping. Step 14: Extract minimum from priority queue Popped node P with distance 0.5296000000000001 Mark P as visited Visited set: {'K', 'A', 'L', 'Q', 'C', 'E', 'H', 'G', 'I', 'O', 'F', 'P'} Checking neighbours of P Inspect edge P -> B (weight 0.3388) New possible distance = 0.5296000000000001 + 0.3388 = 0.8684000000000001 Update: 0.8684000000000001 < 1.1705999999999999 Updated distance[B] = 0.8684000000000001 Updated previous[B] = P Pushed (0.8684000000000001, B) to queue Inspect edge P -> M (weight 0.4801) New possible distance = 0.5296000000000001 + 0.4801 = 1.0097 No update needed (current best: 0.5855) Inspect edge P -> F (weight 0.4107) Neighbour F already visited, skipping. Inspect edge P -> Q (weight 0.178) Neighbour Q already visited, skipping. Inspect edge P -> N (weight 0.1879) New possible distance = 0.5296000000000001 + 0.1879 = 0.7175 No update needed (current best: 0.6416) Priority queue now: [(0.5409999999999999, 'K'), (0.5448999999999999, 'D'), (0.5855, 'M'), (0.5721, 'J'), (1.1705999999999999, 'B'), (0.6416, 'N'), (0.6551, 'N'), (0.8684000000000001, 'B')] Step 15: Extract minimum from priority queue Popped node K with distance 0.5409999999999999 Node K already visited, skipping. Step 16: Extract minimum from priority queue Popped node D with distance 0.5448999999999999 Mark D as visited Visited set: {'K', 'A', 'L', 'D', 'Q', 'C', 'E', 'H', 'G', 'I', 'O', 'F', 'P'} Checking neighbours of D Inspect edge D -> J (weight 0.1304) New possible distance = 0.5448999999999999 + 0.1304 = 0.6752999999999999 No update needed (current best: 0.5721) Inspect edge D -> O (weight 0.1553) Neighbour O already visited, skipping. Inspect edge D -> A (weight 0.3747) Neighbour A already visited, skipping. Priority queue now: [(0.5721, 'J'), (0.6551, 'N'), (0.5855, 'M'), (0.8684000000000001, 'B'), (1.1705999999999999, 'B'), (0.6416, 'N')] Step 17: Extract minimum from priority queue Popped node J with distance 0.5721 Mark J as visited Visited set: {'K', 'A', 'L', 'D', 'J', 'Q', 'C', 'E', 'H', 'G', 'I', 'O', 'F', 'P'} Checking neighbours of J Inspect edge J -> O (weight 0.0878) Neighbour O already visited, skipping. Inspect edge J -> D (weight 0.1304) Neighbour D already visited, skipping. Inspect edge J -> F (weight 0.1348) Neighbour F already visited, skipping. Inspect edge J -> M (weight 0.1051) New possible distance = 0.5721 + 0.1051 = 0.6772 No update needed (current best: 0.5855) Priority queue now: [(0.5855, 'M'), (0.6551, 'N'), (0.6416, 'N'), (0.8684000000000001, 'B'), (1.1705999999999999, 'B')] Step 18: Extract minimum from priority queue Popped node M with distance 0.5855 Mark M as visited Visited set: {'K', 'A', 'M', 'L', 'D', 'J', 'Q', 'C', 'E', 'H', 'G', 'I', 'O', 'F', 'P'} Reached target node M, stopping early. Step Final: Reconstruct path Shortest path: E -> C -> F -> M Total distance: 0.5855 </think> <response>The shortest path from E to M is E -> C -> F -> M. Total distance 0.5855.</response>
17
47e19585-fe2a-4252-876a-1e3437918bfc
The undirected planar graph includes these edge weights: P-S 0.4348 G-L 0.3874 B-Q 0.063 F-P 0.3912 J-L 0.2795 C-D 0.2653 N-U 0.1788 A-F 0.2755 E-K 0.2157 K-M 0.1081 E-T 0.2967 C-H 0.209 A-P 0.4281 N-T 0.8506 F-M 0.2586 H-J 0.2974 B-G 0.3519 O-T 0.2261 J-P 0.4881 L-P 0.4538 R-T 0.6025 E-M 0.151 C-S 0.202 N-P 0.5462 H-S 0.2139 C-E 0.0804 B-I 0.1073 D-H 0.2623 K-R 0.0954 B-H 0.313 A-M 0.0613 F-U 0.0332 F-N 0.2001 I-T 0.151 M-S 0.1082 E-S 0.1617 O-Q 0.0773 G-J 0.1187 D-I 0.0371 F-K 0.2114 D-T 0.1255 A-S 0.0555 N-R 0.2484 F-R 0.1431 K-T 0.5078 I-O 0.1267 G-Q 0.4146 P-U 0.3903 B-D 0.1374 J-S 0.4238 I-Q 0.1085 G-H 0.2564 C-T 0.2224 Apply Dijkstra’s algorithm to determine the shortest route from S to K, making sure to show all intermediate steps.
<think> Step 1: Initialization Initial distances: {'A': inf, 'B': inf, 'C': inf, 'D': inf, 'E': inf, 'F': inf, 'G': inf, 'H': inf, 'I': inf, 'J': inf, 'K': inf, 'L': inf, 'M': inf, 'N': inf, 'O': inf, 'P': inf, 'Q': inf, 'R': inf, 'S': 0, 'T': inf, 'U': inf} Initial previous: {'A': None, 'B': None, 'C': None, 'D': None, 'E': None, 'F': None, 'G': None, 'H': None, 'I': None, 'J': None, 'K': None, 'L': None, 'M': None, 'N': None, 'O': None, 'P': None, 'Q': None, 'R': None, 'S': None, 'T': None, 'U': None} Set distance[S] = 0 Initial priority queue: [(0, 'S')] Step 2: Extract minimum from priority queue Popped node S with distance 0 Mark S as visited Visited set: {'S'} Checking neighbours of S Inspect edge S -> E (weight 0.1617) New possible distance = 0 + 0.1617 = 0.1617 Update: 0.1617 < inf Updated distance[E] = 0.1617 Updated previous[E] = S Pushed (0.1617, E) to queue Inspect edge S -> M (weight 0.1082) New possible distance = 0 + 0.1082 = 0.1082 Update: 0.1082 < inf Updated distance[M] = 0.1082 Updated previous[M] = S Pushed (0.1082, M) to queue Inspect edge S -> H (weight 0.2139) New possible distance = 0 + 0.2139 = 0.2139 Update: 0.2139 < inf Updated distance[H] = 0.2139 Updated previous[H] = S Pushed (0.2139, H) to queue Inspect edge S -> J (weight 0.4238) New possible distance = 0 + 0.4238 = 0.4238 Update: 0.4238 < inf Updated distance[J] = 0.4238 Updated previous[J] = S Pushed (0.4238, J) to queue Inspect edge S -> C (weight 0.202) New possible distance = 0 + 0.202 = 0.202 Update: 0.202 < inf Updated distance[C] = 0.202 Updated previous[C] = S Pushed (0.202, C) to queue Inspect edge S -> A (weight 0.0555) New possible distance = 0 + 0.0555 = 0.0555 Update: 0.0555 < inf Updated distance[A] = 0.0555 Updated previous[A] = S Pushed (0.0555, A) to queue Inspect edge S -> P (weight 0.4348) New possible distance = 0 + 0.4348 = 0.4348 Update: 0.4348 < inf Updated distance[P] = 0.4348 Updated previous[P] = S Pushed (0.4348, P) to queue Priority queue now: [(0.0555, 'A'), (0.1617, 'E'), (0.1082, 'M'), (0.4238, 'J'), (0.202, 'C'), (0.2139, 'H'), (0.4348, 'P')] Step 3: Extract minimum from priority queue Popped node A with distance 0.0555 Mark A as visited Visited set: {'A', 'S'} Checking neighbours of A Inspect edge A -> F (weight 0.2755) New possible distance = 0.0555 + 0.2755 = 0.331 Update: 0.331 < inf Updated distance[F] = 0.331 Updated previous[F] = A Pushed (0.331, F) to queue Inspect edge A -> P (weight 0.4281) New possible distance = 0.0555 + 0.4281 = 0.4836 No update needed (current best: 0.4348) Inspect edge A -> S (weight 0.0555) Neighbour S already visited, skipping. Inspect edge A -> M (weight 0.0613) New possible distance = 0.0555 + 0.0613 = 0.1168 No update needed (current best: 0.1082) Priority queue now: [(0.1082, 'M'), (0.1617, 'E'), (0.2139, 'H'), (0.4238, 'J'), (0.202, 'C'), (0.4348, 'P'), (0.331, 'F')] Step 4: Extract minimum from priority queue Popped node M with distance 0.1082 Mark M as visited Visited set: {'A', 'S', 'M'} Checking neighbours of M Inspect edge M -> E (weight 0.151) New possible distance = 0.1082 + 0.151 = 0.2592 No update needed (current best: 0.1617) Inspect edge M -> K (weight 0.1081) New possible distance = 0.1082 + 0.1081 = 0.2163 Update: 0.2163 < inf Updated distance[K] = 0.2163 Updated previous[K] = M Pushed (0.2163, K) to queue Inspect edge M -> S (weight 0.1082) Neighbour S already visited, skipping. Inspect edge M -> F (weight 0.2586) New possible distance = 0.1082 + 0.2586 = 0.3668 No update needed (current best: 0.331) Inspect edge M -> A (weight 0.0613) Neighbour A already visited, skipping. Priority queue now: [(0.1617, 'E'), (0.202, 'C'), (0.2139, 'H'), (0.4238, 'J'), (0.331, 'F'), (0.4348, 'P'), (0.2163, 'K')] Step 5: Extract minimum from priority queue Popped node E with distance 0.1617 Mark E as visited Visited set: {'A', 'S', 'E', 'M'} Checking neighbours of E Inspect edge E -> M (weight 0.151) Neighbour M already visited, skipping. Inspect edge E -> S (weight 0.1617) Neighbour S already visited, skipping. Inspect edge E -> C (weight 0.0804) New possible distance = 0.1617 + 0.0804 = 0.2421 No update needed (current best: 0.202) Inspect edge E -> K (weight 0.2157) New possible distance = 0.1617 + 0.2157 = 0.3774 No update needed (current best: 0.2163) Inspect edge E -> T (weight 0.2967) New possible distance = 0.1617 + 0.2967 = 0.45840000000000003 Update: 0.45840000000000003 < inf Updated distance[T] = 0.45840000000000003 Updated previous[T] = E Pushed (0.45840000000000003, T) to queue Priority queue now: [(0.202, 'C'), (0.2163, 'K'), (0.2139, 'H'), (0.4238, 'J'), (0.331, 'F'), (0.4348, 'P'), (0.45840000000000003, 'T')] Step 6: Extract minimum from priority queue Popped node C with distance 0.202 Mark C as visited Visited set: {'A', 'M', 'S', 'C', 'E'} Checking neighbours of C Inspect edge C -> E (weight 0.0804) Neighbour E already visited, skipping. Inspect edge C -> H (weight 0.209) New possible distance = 0.202 + 0.209 = 0.41100000000000003 No update needed (current best: 0.2139) Inspect edge C -> T (weight 0.2224) New possible distance = 0.202 + 0.2224 = 0.4244 Update: 0.4244 < 0.45840000000000003 Updated distance[T] = 0.4244 Updated previous[T] = C Pushed (0.4244, T) to queue Inspect edge C -> D (weight 0.2653) New possible distance = 0.202 + 0.2653 = 0.4673 Update: 0.4673 < inf Updated distance[D] = 0.4673 Updated previous[D] = C Pushed (0.4673, D) to queue Inspect edge C -> S (weight 0.202) Neighbour S already visited, skipping. Priority queue now: [(0.2139, 'H'), (0.2163, 'K'), (0.4244, 'T'), (0.4238, 'J'), (0.331, 'F'), (0.45840000000000003, 'T'), (0.4348, 'P'), (0.4673, 'D')] Step 7: Extract minimum from priority queue Popped node H with distance 0.2139 Mark H as visited Visited set: {'A', 'M', 'S', 'C', 'E', 'H'} Checking neighbours of H Inspect edge H -> D (weight 0.2623) New possible distance = 0.2139 + 0.2623 = 0.47619999999999996 No update needed (current best: 0.4673) Inspect edge H -> C (weight 0.209) Neighbour C already visited, skipping. Inspect edge H -> J (weight 0.2974) New possible distance = 0.2139 + 0.2974 = 0.5113 No update needed (current best: 0.4238) Inspect edge H -> G (weight 0.2564) New possible distance = 0.2139 + 0.2564 = 0.47030000000000005 Update: 0.47030000000000005 < inf Updated distance[G] = 0.47030000000000005 Updated previous[G] = H Pushed (0.47030000000000005, G) to queue Inspect edge H -> S (weight 0.2139) Neighbour S already visited, skipping. Inspect edge H -> B (weight 0.313) New possible distance = 0.2139 + 0.313 = 0.5269 Update: 0.5269 < inf Updated distance[B] = 0.5269 Updated previous[B] = H Pushed (0.5269, B) to queue Priority queue now: [(0.2163, 'K'), (0.331, 'F'), (0.4244, 'T'), (0.4238, 'J'), (0.4673, 'D'), (0.45840000000000003, 'T'), (0.4348, 'P'), (0.47030000000000005, 'G'), (0.5269, 'B')] Step 8: Extract minimum from priority queue Popped node K with distance 0.2163 Mark K as visited Visited set: {'K', 'A', 'M', 'S', 'C', 'E', 'H'} Reached target node K, stopping early. Step Final: Reconstruct path Shortest path: S -> M -> K Total distance: 0.2163 </think> <response>The shortest path from S to K is S -> M -> K. Total distance 0.2163.</response>
21
edcf448d-25ec-4987-9e3c-57978c61e7a8
Here are the specified edge distances for an undirected planar graph: K-O 0.232 G-O 0.1773 C-R 0.2969 A-L 0.4978 B-N 0.3114 D-H 0.3954 B-P 0.2502 F-N 0.1285 I-O 0.4458 A-T 0.4003 C-E 0.2055 F-T 0.1019 C-N 0.1947 G-R 0.1427 H-P 0.19 C-O 0.2989 G-K 0.1845 J-K 0.1602 E-N 0.0922 C-D 0.4128 E-F 0.1045 M-S 0.2623 E-I 0.4757 B-L 0.1663 F-S 0.0915 Q-T 0.2934 D-J 0.3755 Q-S 0.1663 G-J 0.1932 A-M 0.2862 E-T 0.1874 A-Q 0.179 S-T 0.1788 M-Q 0.1692 C-H 0.4668 C-G 0.3184 B-M 0.2635 D-R 0.1997 A-I 0.774 B-C 0.2755 I-T 0.3931 B-H 0.3014 I-K 0.5833 E-O 0.3162 L-M 0.2201 M-N 0.2881 L-P 0.2185 N-S 0.0974 J-R 0.2489 Employ Dijkstra’s algorithm to calculate the shortest path from F to K, detailing each step of the solution.
<think> Step 1: Initialization Initial distances: {'A': inf, 'B': inf, 'C': inf, 'D': inf, 'E': inf, 'F': 0, 'G': inf, 'H': inf, 'I': inf, 'J': inf, 'K': inf, 'L': inf, 'M': inf, 'N': inf, 'O': inf, 'P': inf, 'Q': inf, 'R': inf, 'S': inf, 'T': inf} Initial previous: {'A': None, 'B': None, 'C': None, 'D': None, 'E': None, 'F': None, 'G': None, 'H': None, 'I': None, 'J': None, 'K': None, 'L': None, 'M': None, 'N': None, 'O': None, 'P': None, 'Q': None, 'R': None, 'S': None, 'T': None} Set distance[F] = 0 Initial priority queue: [(0, 'F')] Step 2: Extract minimum from priority queue Popped node F with distance 0 Mark F as visited Visited set: {'F'} Checking neighbours of F Inspect edge F -> N (weight 0.1285) New possible distance = 0 + 0.1285 = 0.1285 Update: 0.1285 < inf Updated distance[N] = 0.1285 Updated previous[N] = F Pushed (0.1285, N) to queue Inspect edge F -> T (weight 0.1019) New possible distance = 0 + 0.1019 = 0.1019 Update: 0.1019 < inf Updated distance[T] = 0.1019 Updated previous[T] = F Pushed (0.1019, T) to queue Inspect edge F -> E (weight 0.1045) New possible distance = 0 + 0.1045 = 0.1045 Update: 0.1045 < inf Updated distance[E] = 0.1045 Updated previous[E] = F Pushed (0.1045, E) to queue Inspect edge F -> S (weight 0.0915) New possible distance = 0 + 0.0915 = 0.0915 Update: 0.0915 < inf Updated distance[S] = 0.0915 Updated previous[S] = F Pushed (0.0915, S) to queue Priority queue now: [(0.0915, 'S'), (0.1019, 'T'), (0.1045, 'E'), (0.1285, 'N')] Step 3: Extract minimum from priority queue Popped node S with distance 0.0915 Mark S as visited Visited set: {'F', 'S'} Checking neighbours of S Inspect edge S -> T (weight 0.1788) New possible distance = 0.0915 + 0.1788 = 0.2703 No update needed (current best: 0.1019) Inspect edge S -> M (weight 0.2623) New possible distance = 0.0915 + 0.2623 = 0.3538 Update: 0.3538 < inf Updated distance[M] = 0.3538 Updated previous[M] = S Pushed (0.3538, M) to queue Inspect edge S -> F (weight 0.0915) Neighbour F already visited, skipping. Inspect edge S -> Q (weight 0.1663) New possible distance = 0.0915 + 0.1663 = 0.25780000000000003 Update: 0.25780000000000003 < inf Updated distance[Q] = 0.25780000000000003 Updated previous[Q] = S Pushed (0.25780000000000003, Q) to queue Inspect edge S -> N (weight 0.0974) New possible distance = 0.0915 + 0.0974 = 0.1889 No update needed (current best: 0.1285) Priority queue now: [(0.1019, 'T'), (0.1285, 'N'), (0.1045, 'E'), (0.3538, 'M'), (0.25780000000000003, 'Q')] Step 4: Extract minimum from priority queue Popped node T with distance 0.1019 Mark T as visited Visited set: {'F', 'S', 'T'} Checking neighbours of T Inspect edge T -> F (weight 0.1019) Neighbour F already visited, skipping. Inspect edge T -> Q (weight 0.2934) New possible distance = 0.1019 + 0.2934 = 0.3953 No update needed (current best: 0.25780000000000003) Inspect edge T -> S (weight 0.1788) Neighbour S already visited, skipping. Inspect edge T -> A (weight 0.4003) New possible distance = 0.1019 + 0.4003 = 0.5022 Update: 0.5022 < inf Updated distance[A] = 0.5022 Updated previous[A] = T Pushed (0.5022, A) to queue Inspect edge T -> E (weight 0.1874) New possible distance = 0.1019 + 0.1874 = 0.2893 No update needed (current best: 0.1045) Inspect edge T -> I (weight 0.3931) New possible distance = 0.1019 + 0.3931 = 0.495 Update: 0.495 < inf Updated distance[I] = 0.495 Updated previous[I] = T Pushed (0.495, I) to queue Priority queue now: [(0.1045, 'E'), (0.1285, 'N'), (0.25780000000000003, 'Q'), (0.3538, 'M'), (0.5022, 'A'), (0.495, 'I')] Step 5: Extract minimum from priority queue Popped node E with distance 0.1045 Mark E as visited Visited set: {'E', 'F', 'S', 'T'} Checking neighbours of E Inspect edge E -> F (weight 0.1045) Neighbour F already visited, skipping. Inspect edge E -> I (weight 0.4757) New possible distance = 0.1045 + 0.4757 = 0.5802 No update needed (current best: 0.495) Inspect edge E -> O (weight 0.3162) New possible distance = 0.1045 + 0.3162 = 0.42069999999999996 Update: 0.42069999999999996 < inf Updated distance[O] = 0.42069999999999996 Updated previous[O] = E Pushed (0.42069999999999996, O) to queue Inspect edge E -> C (weight 0.2055) New possible distance = 0.1045 + 0.2055 = 0.31 Update: 0.31 < inf Updated distance[C] = 0.31 Updated previous[C] = E Pushed (0.31, C) to queue Inspect edge E -> N (weight 0.0922) New possible distance = 0.1045 + 0.0922 = 0.19669999999999999 No update needed (current best: 0.1285) Inspect edge E -> T (weight 0.1874) Neighbour T already visited, skipping. Priority queue now: [(0.1285, 'N'), (0.3538, 'M'), (0.25780000000000003, 'Q'), (0.495, 'I'), (0.5022, 'A'), (0.42069999999999996, 'O'), (0.31, 'C')] Step 6: Extract minimum from priority queue Popped node N with distance 0.1285 Mark N as visited Visited set: {'N', 'S', 'E', 'T', 'F'} Checking neighbours of N Inspect edge N -> M (weight 0.2881) New possible distance = 0.1285 + 0.2881 = 0.4166 No update needed (current best: 0.3538) Inspect edge N -> F (weight 0.1285) Neighbour F already visited, skipping. Inspect edge N -> C (weight 0.1947) New possible distance = 0.1285 + 0.1947 = 0.32320000000000004 No update needed (current best: 0.31) Inspect edge N -> E (weight 0.0922) Neighbour E already visited, skipping. Inspect edge N -> S (weight 0.0974) Neighbour S already visited, skipping. Inspect edge N -> B (weight 0.3114) New possible distance = 0.1285 + 0.3114 = 0.4399 Update: 0.4399 < inf Updated distance[B] = 0.4399 Updated previous[B] = N Pushed (0.4399, B) to queue Priority queue now: [(0.25780000000000003, 'Q'), (0.3538, 'M'), (0.31, 'C'), (0.495, 'I'), (0.5022, 'A'), (0.42069999999999996, 'O'), (0.4399, 'B')] Step 7: Extract minimum from priority queue Popped node Q with distance 0.25780000000000003 Mark Q as visited Visited set: {'N', 'S', 'Q', 'E', 'T', 'F'} Checking neighbours of Q Inspect edge Q -> M (weight 0.1692) New possible distance = 0.25780000000000003 + 0.1692 = 0.42700000000000005 No update needed (current best: 0.3538) Inspect edge Q -> T (weight 0.2934) Neighbour T already visited, skipping. Inspect edge Q -> A (weight 0.179) New possible distance = 0.25780000000000003 + 0.179 = 0.4368 Update: 0.4368 < 0.5022 Updated distance[A] = 0.4368 Updated previous[A] = Q Pushed (0.4368, A) to queue Inspect edge Q -> S (weight 0.1663) Neighbour S already visited, skipping. Priority queue now: [(0.31, 'C'), (0.3538, 'M'), (0.42069999999999996, 'O'), (0.495, 'I'), (0.5022, 'A'), (0.4399, 'B'), (0.4368, 'A')] Step 8: Extract minimum from priority queue Popped node C with distance 0.31 Mark C as visited Visited set: {'N', 'S', 'Q', 'E', 'C', 'T', 'F'} Checking neighbours of C Inspect edge C -> O (weight 0.2989) New possible distance = 0.31 + 0.2989 = 0.6089 No update needed (current best: 0.42069999999999996) Inspect edge C -> R (weight 0.2969) New possible distance = 0.31 + 0.2969 = 0.6069 Update: 0.6069 < inf Updated distance[R] = 0.6069 Updated previous[R] = C Pushed (0.6069, R) to queue Inspect edge C -> E (weight 0.2055) Neighbour E already visited, skipping. Inspect edge C -> B (weight 0.2755) New possible distance = 0.31 + 0.2755 = 0.5855 No update needed (current best: 0.4399) Inspect edge C -> H (weight 0.4668) New possible distance = 0.31 + 0.4668 = 0.7767999999999999 Update: 0.7767999999999999 < inf Updated distance[H] = 0.7767999999999999 Updated previous[H] = C Pushed (0.7767999999999999, H) to queue Inspect edge C -> N (weight 0.1947) Neighbour N already visited, skipping. Inspect edge C -> D (weight 0.4128) New possible distance = 0.31 + 0.4128 = 0.7228 Update: 0.7228 < inf Updated distance[D] = 0.7228 Updated previous[D] = C Pushed (0.7228, D) to queue Inspect edge C -> G (weight 0.3184) New possible distance = 0.31 + 0.3184 = 0.6284000000000001 Update: 0.6284000000000001 < inf Updated distance[G] = 0.6284000000000001 Updated previous[G] = C Pushed (0.6284000000000001, G) to queue Priority queue now: [(0.3538, 'M'), (0.4368, 'A'), (0.42069999999999996, 'O'), (0.495, 'I'), (0.5022, 'A'), (0.4399, 'B'), (0.6069, 'R'), (0.7767999999999999, 'H'), (0.7228, 'D'), (0.6284000000000001, 'G')] Step 9: Extract minimum from priority queue Popped node M with distance 0.3538 Mark M as visited Visited set: {'M', 'N', 'S', 'Q', 'E', 'C', 'T', 'F'} Checking neighbours of M Inspect edge M -> Q (weight 0.1692) Neighbour Q already visited, skipping. Inspect edge M -> N (weight 0.2881) Neighbour N already visited, skipping. Inspect edge M -> B (weight 0.2635) New possible distance = 0.3538 + 0.2635 = 0.6173 No update needed (current best: 0.4399) Inspect edge M -> S (weight 0.2623) Neighbour S already visited, skipping. Inspect edge M -> A (weight 0.2862) New possible distance = 0.3538 + 0.2862 = 0.64 No update needed (current best: 0.4368) Inspect edge M -> L (weight 0.2201) New possible distance = 0.3538 + 0.2201 = 0.5739 Update: 0.5739 < inf Updated distance[L] = 0.5739 Updated previous[L] = M Pushed (0.5739, L) to queue Priority queue now: [(0.42069999999999996, 'O'), (0.4368, 'A'), (0.4399, 'B'), (0.495, 'I'), (0.5022, 'A'), (0.6284000000000001, 'G'), (0.6069, 'R'), (0.7767999999999999, 'H'), (0.7228, 'D'), (0.5739, 'L')] Step 10: Extract minimum from priority queue Popped node O with distance 0.42069999999999996 Mark O as visited Visited set: {'M', 'N', 'S', 'Q', 'E', 'C', 'T', 'O', 'F'} Checking neighbours of O Inspect edge O -> C (weight 0.2989) Neighbour C already visited, skipping. Inspect edge O -> G (weight 0.1773) New possible distance = 0.42069999999999996 + 0.1773 = 0.598 Update: 0.598 < 0.6284000000000001 Updated distance[G] = 0.598 Updated previous[G] = O Pushed (0.598, G) to queue Inspect edge O -> E (weight 0.3162) Neighbour E already visited, skipping. Inspect edge O -> I (weight 0.4458) New possible distance = 0.42069999999999996 + 0.4458 = 0.8664999999999999 No update needed (current best: 0.495) Inspect edge O -> K (weight 0.232) New possible distance = 0.42069999999999996 + 0.232 = 0.6527 Update: 0.6527 < inf Updated distance[K] = 0.6527 Updated previous[K] = O Pushed (0.6527, K) to queue Priority queue now: [(0.4368, 'A'), (0.495, 'I'), (0.4399, 'B'), (0.5739, 'L'), (0.5022, 'A'), (0.6284000000000001, 'G'), (0.6069, 'R'), (0.7767999999999999, 'H'), (0.7228, 'D'), (0.598, 'G'), (0.6527, 'K')] Step 11: Extract minimum from priority queue Popped node A with distance 0.4368 Mark A as visited Visited set: {'A', 'M', 'N', 'S', 'Q', 'E', 'C', 'T', 'O', 'F'} Checking neighbours of A Inspect edge A -> I (weight 0.774) New possible distance = 0.4368 + 0.774 = 1.2108 No update needed (current best: 0.495) Inspect edge A -> L (weight 0.4978) New possible distance = 0.4368 + 0.4978 = 0.9346000000000001 No update needed (current best: 0.5739) Inspect edge A -> Q (weight 0.179) Neighbour Q already visited, skipping. Inspect edge A -> T (weight 0.4003) Neighbour T already visited, skipping. Inspect edge A -> M (weight 0.2862) Neighbour M already visited, skipping. Priority queue now: [(0.4399, 'B'), (0.495, 'I'), (0.6069, 'R'), (0.5739, 'L'), (0.5022, 'A'), (0.6284000000000001, 'G'), (0.6527, 'K'), (0.7767999999999999, 'H'), (0.7228, 'D'), (0.598, 'G')] Step 12: Extract minimum from priority queue Popped node B with distance 0.4399 Mark B as visited Visited set: {'A', 'M', 'N', 'S', 'Q', 'E', 'C', 'T', 'B', 'O', 'F'} Checking neighbours of B Inspect edge B -> M (weight 0.2635) Neighbour M already visited, skipping. Inspect edge B -> P (weight 0.2502) New possible distance = 0.4399 + 0.2502 = 0.6900999999999999 Update: 0.6900999999999999 < inf Updated distance[P] = 0.6900999999999999 Updated previous[P] = B Pushed (0.6900999999999999, P) to queue Inspect edge B -> C (weight 0.2755) Neighbour C already visited, skipping. Inspect edge B -> L (weight 0.1663) New possible distance = 0.4399 + 0.1663 = 0.6062000000000001 No update needed (current best: 0.5739) Inspect edge B -> H (weight 0.3014) New possible distance = 0.4399 + 0.3014 = 0.7413000000000001 Update: 0.7413000000000001 < 0.7767999999999999 Updated distance[H] = 0.7413000000000001 Updated previous[H] = B Pushed (0.7413000000000001, H) to queue Inspect edge B -> N (weight 0.3114) Neighbour N already visited, skipping. Priority queue now: [(0.495, 'I'), (0.5022, 'A'), (0.6069, 'R'), (0.5739, 'L'), (0.598, 'G'), (0.6284000000000001, 'G'), (0.6527, 'K'), (0.7767999999999999, 'H'), (0.7228, 'D'), (0.6900999999999999, 'P'), (0.7413000000000001, 'H')] Step 13: Extract minimum from priority queue Popped node I with distance 0.495 Mark I as visited Visited set: {'A', 'M', 'N', 'S', 'Q', 'E', 'C', 'T', 'B', 'I', 'O', 'F'} Checking neighbours of I Inspect edge I -> A (weight 0.774) Neighbour A already visited, skipping. Inspect edge I -> E (weight 0.4757) Neighbour E already visited, skipping. Inspect edge I -> O (weight 0.4458) Neighbour O already visited, skipping. Inspect edge I -> K (weight 0.5833) New possible distance = 0.495 + 0.5833 = 1.0783 No update needed (current best: 0.6527) Inspect edge I -> T (weight 0.3931) Neighbour T already visited, skipping. Priority queue now: [(0.5022, 'A'), (0.5739, 'L'), (0.6069, 'R'), (0.7228, 'D'), (0.598, 'G'), (0.6284000000000001, 'G'), (0.6527, 'K'), (0.7767999999999999, 'H'), (0.7413000000000001, 'H'), (0.6900999999999999, 'P')] Step 14: Extract minimum from priority queue Popped node A with distance 0.5022 Node A already visited, skipping. Step 15: Extract minimum from priority queue Popped node L with distance 0.5739 Mark L as visited Visited set: {'A', 'M', 'N', 'L', 'S', 'Q', 'E', 'C', 'T', 'B', 'I', 'O', 'F'} Checking neighbours of L Inspect edge L -> A (weight 0.4978) Neighbour A already visited, skipping. Inspect edge L -> B (weight 0.1663) Neighbour B already visited, skipping. Inspect edge L -> M (weight 0.2201) Neighbour M already visited, skipping. Inspect edge L -> P (weight 0.2185) New possible distance = 0.5739 + 0.2185 = 0.7924 No update needed (current best: 0.6900999999999999) Priority queue now: [(0.598, 'G'), (0.6900999999999999, 'P'), (0.6069, 'R'), (0.7228, 'D'), (0.7413000000000001, 'H'), (0.6284000000000001, 'G'), (0.6527, 'K'), (0.7767999999999999, 'H')] Step 16: Extract minimum from priority queue Popped node G with distance 0.598 Mark G as visited Visited set: {'A', 'M', 'G', 'N', 'L', 'S', 'Q', 'E', 'C', 'T', 'B', 'I', 'O', 'F'} Checking neighbours of G Inspect edge G -> O (weight 0.1773) Neighbour O already visited, skipping. Inspect edge G -> R (weight 0.1427) New possible distance = 0.598 + 0.1427 = 0.7406999999999999 No update needed (current best: 0.6069) Inspect edge G -> K (weight 0.1845) New possible distance = 0.598 + 0.1845 = 0.7825 No update needed (current best: 0.6527) Inspect edge G -> C (weight 0.3184) Neighbour C already visited, skipping. Inspect edge G -> J (weight 0.1932) New possible distance = 0.598 + 0.1932 = 0.7912 Update: 0.7912 < inf Updated distance[J] = 0.7912 Updated previous[J] = G Pushed (0.7912, J) to queue Priority queue now: [(0.6069, 'R'), (0.6900999999999999, 'P'), (0.6284000000000001, 'G'), (0.7228, 'D'), (0.7413000000000001, 'H'), (0.7767999999999999, 'H'), (0.6527, 'K'), (0.7912, 'J')] Step 17: Extract minimum from priority queue Popped node R with distance 0.6069 Mark R as visited Visited set: {'A', 'M', 'G', 'N', 'L', 'S', 'Q', 'R', 'E', 'C', 'T', 'B', 'I', 'O', 'F'} Checking neighbours of R Inspect edge R -> J (weight 0.2489) New possible distance = 0.6069 + 0.2489 = 0.8558 No update needed (current best: 0.7912) Inspect edge R -> C (weight 0.2969) Neighbour C already visited, skipping. Inspect edge R -> G (weight 0.1427) Neighbour G already visited, skipping. Inspect edge R -> D (weight 0.1997) New possible distance = 0.6069 + 0.1997 = 0.8066 No update needed (current best: 0.7228) Priority queue now: [(0.6284000000000001, 'G'), (0.6900999999999999, 'P'), (0.6527, 'K'), (0.7228, 'D'), (0.7413000000000001, 'H'), (0.7767999999999999, 'H'), (0.7912, 'J')] Step 18: Extract minimum from priority queue Popped node G with distance 0.6284000000000001 Node G already visited, skipping. Step 19: Extract minimum from priority queue Popped node K with distance 0.6527 Mark K as visited Visited set: {'K', 'A', 'M', 'G', 'N', 'L', 'S', 'Q', 'R', 'E', 'C', 'T', 'B', 'I', 'O', 'F'} Reached target node K, stopping early. Step Final: Reconstruct path Shortest path: F -> E -> O -> K Total distance: 0.6527 </think> <response>The shortest path from F to K is F -> E -> O -> K. Total distance 0.6527.</response>
20
32902127-50e4-4450-b2c7-454efea37862
An undirected planar graph has the following edge lengths: B-E 0.2728 E-L 0.213 D-J 0.5088 F-S 0.1273 D-S 0.4699 G-M 0.1301 H-R 0.0831 A-F 0.4537 B-Q 0.1571 I-T 0.3932 F-J 0.3206 D-I 0.2328 B-K 0.2669 I-O 0.3533 K-R 0.0899 G-H 0.4403 K-Q 0.1393 E-S 0.1446 M-R 0.3206 L-R 0.2509 L-S 0.2282 D-N 0.4549 H-M 0.3565 D-P 0.1418 G-I 0.3185 J-N 0.1638 B-L 0.1513 C-M 0.0862 N-T 0.3194 D-G 0.3083 E-F 0.109 A-N 0.1196 L-Q 0.0839 I-P 0.1749 C-R 0.3338 C-G 0.1996 C-S 0.3597 Q-R 0.1856 A-T 0.4358 D-T 0.3042 H-K 0.1205 P-T 0.2264 J-S 0.3689 C-L 0.4088 G-O 0.2152 H-O 0.5826 C-D 0.2471 A-J 0.1345 Using Dijkstra’s algorithm, identify the shortest path between C and H and present a comprehensive step-by-step explanation.
<think> Step 1: Initialization Initial distances: {'A': inf, 'B': inf, 'C': 0, 'D': inf, 'E': inf, 'F': inf, 'G': inf, 'H': inf, 'I': inf, 'J': inf, 'K': inf, 'L': inf, 'M': inf, 'N': inf, 'O': inf, 'P': inf, 'Q': inf, 'R': inf, 'S': inf, 'T': inf} Initial previous: {'A': None, 'B': None, 'C': None, 'D': None, 'E': None, 'F': None, 'G': None, 'H': None, 'I': None, 'J': None, 'K': None, 'L': None, 'M': None, 'N': None, 'O': None, 'P': None, 'Q': None, 'R': None, 'S': None, 'T': None} Set distance[C] = 0 Initial priority queue: [(0, 'C')] Step 2: Extract minimum from priority queue Popped node C with distance 0 Mark C as visited Visited set: {'C'} Checking neighbours of C Inspect edge C -> L (weight 0.4088) New possible distance = 0 + 0.4088 = 0.4088 Update: 0.4088 < inf Updated distance[L] = 0.4088 Updated previous[L] = C Pushed (0.4088, L) to queue Inspect edge C -> R (weight 0.3338) New possible distance = 0 + 0.3338 = 0.3338 Update: 0.3338 < inf Updated distance[R] = 0.3338 Updated previous[R] = C Pushed (0.3338, R) to queue Inspect edge C -> D (weight 0.2471) New possible distance = 0 + 0.2471 = 0.2471 Update: 0.2471 < inf Updated distance[D] = 0.2471 Updated previous[D] = C Pushed (0.2471, D) to queue Inspect edge C -> G (weight 0.1996) New possible distance = 0 + 0.1996 = 0.1996 Update: 0.1996 < inf Updated distance[G] = 0.1996 Updated previous[G] = C Pushed (0.1996, G) to queue Inspect edge C -> M (weight 0.0862) New possible distance = 0 + 0.0862 = 0.0862 Update: 0.0862 < inf Updated distance[M] = 0.0862 Updated previous[M] = C Pushed (0.0862, M) to queue Inspect edge C -> S (weight 0.3597) New possible distance = 0 + 0.3597 = 0.3597 Update: 0.3597 < inf Updated distance[S] = 0.3597 Updated previous[S] = C Pushed (0.3597, S) to queue Priority queue now: [(0.0862, 'M'), (0.1996, 'G'), (0.3338, 'R'), (0.4088, 'L'), (0.2471, 'D'), (0.3597, 'S')] Step 3: Extract minimum from priority queue Popped node M with distance 0.0862 Mark M as visited Visited set: {'C', 'M'} Checking neighbours of M Inspect edge M -> G (weight 0.1301) New possible distance = 0.0862 + 0.1301 = 0.2163 No update needed (current best: 0.1996) Inspect edge M -> H (weight 0.3565) New possible distance = 0.0862 + 0.3565 = 0.4427 Update: 0.4427 < inf Updated distance[H] = 0.4427 Updated previous[H] = M Pushed (0.4427, H) to queue Inspect edge M -> R (weight 0.3206) New possible distance = 0.0862 + 0.3206 = 0.4068 No update needed (current best: 0.3338) Inspect edge M -> C (weight 0.0862) Neighbour C already visited, skipping. Priority queue now: [(0.1996, 'G'), (0.2471, 'D'), (0.3338, 'R'), (0.4088, 'L'), (0.3597, 'S'), (0.4427, 'H')] Step 4: Extract minimum from priority queue Popped node G with distance 0.1996 Mark G as visited Visited set: {'C', 'M', 'G'} Checking neighbours of G Inspect edge G -> M (weight 0.1301) Neighbour M already visited, skipping. Inspect edge G -> I (weight 0.3185) New possible distance = 0.1996 + 0.3185 = 0.5181 Update: 0.5181 < inf Updated distance[I] = 0.5181 Updated previous[I] = G Pushed (0.5181, I) to queue Inspect edge G -> O (weight 0.2152) New possible distance = 0.1996 + 0.2152 = 0.4148 Update: 0.4148 < inf Updated distance[O] = 0.4148 Updated previous[O] = G Pushed (0.4148, O) to queue Inspect edge G -> D (weight 0.3083) New possible distance = 0.1996 + 0.3083 = 0.5079 No update needed (current best: 0.2471) Inspect edge G -> H (weight 0.4403) New possible distance = 0.1996 + 0.4403 = 0.6399 No update needed (current best: 0.4427) Inspect edge G -> C (weight 0.1996) Neighbour C already visited, skipping. Priority queue now: [(0.2471, 'D'), (0.3597, 'S'), (0.3338, 'R'), (0.4088, 'L'), (0.4427, 'H'), (0.5181, 'I'), (0.4148, 'O')] Step 5: Extract minimum from priority queue Popped node D with distance 0.2471 Mark D as visited Visited set: {'C', 'M', 'D', 'G'} Checking neighbours of D Inspect edge D -> N (weight 0.4549) New possible distance = 0.2471 + 0.4549 = 0.702 Update: 0.702 < inf Updated distance[N] = 0.702 Updated previous[N] = D Pushed (0.702, N) to queue Inspect edge D -> T (weight 0.3042) New possible distance = 0.2471 + 0.3042 = 0.5513 Update: 0.5513 < inf Updated distance[T] = 0.5513 Updated previous[T] = D Pushed (0.5513, T) to queue Inspect edge D -> J (weight 0.5088) New possible distance = 0.2471 + 0.5088 = 0.7559 Update: 0.7559 < inf Updated distance[J] = 0.7559 Updated previous[J] = D Pushed (0.7559, J) to queue Inspect edge D -> G (weight 0.3083) Neighbour G already visited, skipping. Inspect edge D -> S (weight 0.4699) New possible distance = 0.2471 + 0.4699 = 0.717 No update needed (current best: 0.3597) Inspect edge D -> P (weight 0.1418) New possible distance = 0.2471 + 0.1418 = 0.3889 Update: 0.3889 < inf Updated distance[P] = 0.3889 Updated previous[P] = D Pushed (0.3889, P) to queue Inspect edge D -> I (weight 0.2328) New possible distance = 0.2471 + 0.2328 = 0.4799 Update: 0.4799 < 0.5181 Updated distance[I] = 0.4799 Updated previous[I] = D Pushed (0.4799, I) to queue Inspect edge D -> C (weight 0.2471) Neighbour C already visited, skipping. Priority queue now: [(0.3338, 'R'), (0.3597, 'S'), (0.4148, 'O'), (0.4088, 'L'), (0.3889, 'P'), (0.5181, 'I'), (0.702, 'N'), (0.5513, 'T'), (0.7559, 'J'), (0.4427, 'H'), (0.4799, 'I')] Step 6: Extract minimum from priority queue Popped node R with distance 0.3338 Mark R as visited Visited set: {'M', 'D', 'C', 'G', 'R'} Checking neighbours of R Inspect edge R -> H (weight 0.0831) New possible distance = 0.3338 + 0.0831 = 0.4169 Update: 0.4169 < 0.4427 Updated distance[H] = 0.4169 Updated previous[H] = R Pushed (0.4169, H) to queue Inspect edge R -> L (weight 0.2509) New possible distance = 0.3338 + 0.2509 = 0.5847 No update needed (current best: 0.4088) Inspect edge R -> C (weight 0.3338) Neighbour C already visited, skipping. Inspect edge R -> K (weight 0.0899) New possible distance = 0.3338 + 0.0899 = 0.42369999999999997 Update: 0.42369999999999997 < inf Updated distance[K] = 0.42369999999999997 Updated previous[K] = R Pushed (0.42369999999999997, K) to queue Inspect edge R -> M (weight 0.3206) Neighbour M already visited, skipping. Inspect edge R -> Q (weight 0.1856) New possible distance = 0.3338 + 0.1856 = 0.5194 Update: 0.5194 < inf Updated distance[Q] = 0.5194 Updated previous[Q] = R Pushed (0.5194, Q) to queue Priority queue now: [(0.3597, 'S'), (0.3889, 'P'), (0.4148, 'O'), (0.4088, 'L'), (0.4169, 'H'), (0.42369999999999997, 'K'), (0.702, 'N'), (0.5513, 'T'), (0.7559, 'J'), (0.4799, 'I'), (0.4427, 'H'), (0.5181, 'I'), (0.5194, 'Q')] Step 7: Extract minimum from priority queue Popped node S with distance 0.3597 Mark S as visited Visited set: {'M', 'D', 'S', 'C', 'G', 'R'} Checking neighbours of S Inspect edge S -> E (weight 0.1446) New possible distance = 0.3597 + 0.1446 = 0.5043 Update: 0.5043 < inf Updated distance[E] = 0.5043 Updated previous[E] = S Pushed (0.5043, E) to queue Inspect edge S -> D (weight 0.4699) Neighbour D already visited, skipping. Inspect edge S -> F (weight 0.1273) New possible distance = 0.3597 + 0.1273 = 0.487 Update: 0.487 < inf Updated distance[F] = 0.487 Updated previous[F] = S Pushed (0.487, F) to queue Inspect edge S -> J (weight 0.3689) New possible distance = 0.3597 + 0.3689 = 0.7286 Update: 0.7286 < 0.7559 Updated distance[J] = 0.7286 Updated previous[J] = S Pushed (0.7286, J) to queue Inspect edge S -> C (weight 0.3597) Neighbour C already visited, skipping. Inspect edge S -> L (weight 0.2282) New possible distance = 0.3597 + 0.2282 = 0.5879 No update needed (current best: 0.4088) Priority queue now: [(0.3889, 'P'), (0.4088, 'L'), (0.4148, 'O'), (0.5194, 'Q'), (0.4169, 'H'), (0.42369999999999997, 'K'), (0.487, 'F'), (0.5513, 'T'), (0.7559, 'J'), (0.4799, 'I'), (0.4427, 'H'), (0.5181, 'I'), (0.5043, 'E'), (0.702, 'N'), (0.7286, 'J')] Step 8: Extract minimum from priority queue Popped node P with distance 0.3889 Mark P as visited Visited set: {'M', 'D', 'S', 'C', 'G', 'R', 'P'} Checking neighbours of P Inspect edge P -> I (weight 0.1749) New possible distance = 0.3889 + 0.1749 = 0.5638000000000001 No update needed (current best: 0.4799) Inspect edge P -> D (weight 0.1418) Neighbour D already visited, skipping. Inspect edge P -> T (weight 0.2264) New possible distance = 0.3889 + 0.2264 = 0.6153 No update needed (current best: 0.5513) Priority queue now: [(0.4088, 'L'), (0.4169, 'H'), (0.4148, 'O'), (0.5194, 'Q'), (0.4427, 'H'), (0.42369999999999997, 'K'), (0.487, 'F'), (0.5513, 'T'), (0.7559, 'J'), (0.4799, 'I'), (0.7286, 'J'), (0.5181, 'I'), (0.5043, 'E'), (0.702, 'N')] Step 9: Extract minimum from priority queue Popped node L with distance 0.4088 Mark L as visited Visited set: {'M', 'L', 'D', 'S', 'C', 'G', 'R', 'P'} Checking neighbours of L Inspect edge L -> C (weight 0.4088) Neighbour C already visited, skipping. Inspect edge L -> R (weight 0.2509) Neighbour R already visited, skipping. Inspect edge L -> E (weight 0.213) New possible distance = 0.4088 + 0.213 = 0.6218 No update needed (current best: 0.5043) Inspect edge L -> Q (weight 0.0839) New possible distance = 0.4088 + 0.0839 = 0.4927 Update: 0.4927 < 0.5194 Updated distance[Q] = 0.4927 Updated previous[Q] = L Pushed (0.4927, Q) to queue Inspect edge L -> B (weight 0.1513) New possible distance = 0.4088 + 0.1513 = 0.5601 Update: 0.5601 < inf Updated distance[B] = 0.5601 Updated previous[B] = L Pushed (0.5601, B) to queue Inspect edge L -> S (weight 0.2282) Neighbour S already visited, skipping. Priority queue now: [(0.4148, 'O'), (0.4169, 'H'), (0.42369999999999997, 'K'), (0.5194, 'Q'), (0.4427, 'H'), (0.5043, 'E'), (0.487, 'F'), (0.5513, 'T'), (0.7559, 'J'), (0.4799, 'I'), (0.7286, 'J'), (0.5181, 'I'), (0.702, 'N'), (0.4927, 'Q'), (0.5601, 'B')] Step 10: Extract minimum from priority queue Popped node O with distance 0.4148 Mark O as visited Visited set: {'M', 'L', 'D', 'S', 'C', 'G', 'R', 'O', 'P'} Checking neighbours of O Inspect edge O -> G (weight 0.2152) Neighbour G already visited, skipping. Inspect edge O -> I (weight 0.3533) New possible distance = 0.4148 + 0.3533 = 0.7681 No update needed (current best: 0.4799) Inspect edge O -> H (weight 0.5826) New possible distance = 0.4148 + 0.5826 = 0.9974000000000001 No update needed (current best: 0.4169) Priority queue now: [(0.4169, 'H'), (0.4427, 'H'), (0.42369999999999997, 'K'), (0.5194, 'Q'), (0.4799, 'I'), (0.5043, 'E'), (0.487, 'F'), (0.5513, 'T'), (0.7559, 'J'), (0.5601, 'B'), (0.7286, 'J'), (0.5181, 'I'), (0.702, 'N'), (0.4927, 'Q')] Step 11: Extract minimum from priority queue Popped node H with distance 0.4169 Mark H as visited Visited set: {'M', 'L', 'D', 'S', 'C', 'H', 'G', 'R', 'O', 'P'} Reached target node H, stopping early. Step Final: Reconstruct path Shortest path: C -> R -> H Total distance: 0.4169 </think> <response>The shortest path from C to H is C -> R -> H. Total distance 0.4169.</response>
20
0feec005-1ac7-4cb5-8195-0ce657cd2b69
The following values represent the edge lengths of an undirected planar graph: D-I 0.5271 A-B 0.2147 H-I 0.732 C-F 0.3796 E-F 0.1272 A-J 0.3708 B-H 0.337 D-E 0.4135 A-C 0.1894 A-G 0.3292 G-I 0.4903 C-D 0.2462 D-H 0.2166 F-I 0.3398 E-I 0.2189 C-G 0.3548 C-E 0.4272 H-J 0.265 B-D 0.3108 B-C 0.1408 B-J 0.1616 F-G 0.1513 Using Dijkstra's algorithm, determine the shortest path from F to E and document each step thoroughly.
<think> Step 1: Initialization Initial distances: {'A': inf, 'B': inf, 'C': inf, 'D': inf, 'E': inf, 'F': 0, 'G': inf, 'H': inf, 'I': inf, 'J': inf} Initial previous: {'A': None, 'B': None, 'C': None, 'D': None, 'E': None, 'F': None, 'G': None, 'H': None, 'I': None, 'J': None} Set distance[F] = 0 Initial priority queue: [(0, 'F')] Step 2: Extract minimum from priority queue Popped node F with distance 0 Mark F as visited Visited set: {'F'} Checking neighbours of F Inspect edge F -> C (weight 0.3796) New possible distance = 0 + 0.3796 = 0.3796 Update: 0.3796 < inf Updated distance[C] = 0.3796 Updated previous[C] = F Pushed (0.3796, C) to queue Inspect edge F -> E (weight 0.1272) New possible distance = 0 + 0.1272 = 0.1272 Update: 0.1272 < inf Updated distance[E] = 0.1272 Updated previous[E] = F Pushed (0.1272, E) to queue Inspect edge F -> G (weight 0.1513) New possible distance = 0 + 0.1513 = 0.1513 Update: 0.1513 < inf Updated distance[G] = 0.1513 Updated previous[G] = F Pushed (0.1513, G) to queue Inspect edge F -> I (weight 0.3398) New possible distance = 0 + 0.3398 = 0.3398 Update: 0.3398 < inf Updated distance[I] = 0.3398 Updated previous[I] = F Pushed (0.3398, I) to queue Priority queue now: [(0.1272, 'E'), (0.3398, 'I'), (0.1513, 'G'), (0.3796, 'C')] Step 3: Extract minimum from priority queue Popped node E with distance 0.1272 Mark E as visited Visited set: {'F', 'E'} Reached target node E, stopping early. Step Final: Reconstruct path Shortest path: F -> E Total distance: 0.1272 </think> <response>The shortest path from F to E is F -> E. Total distance 0.1272.</response>
10
3a7e6da5-2294-4d7a-bb51-e4031266fd2d
The following data gives the edge weights of an undirected planar graph: D-P 0.1208 A-K 0.484 D-R 0.1572 J-M 0.2069 L-O 0.1978 P-R 0.2084 A-J 0.5227 A-O 0.1481 H-N 0.0583 A-F 0.1571 D-J 0.2434 D-K 0.1375 G-L 0.1469 G-N 0.4562 J-R 0.3407 C-P 0.3288 F-O 0.2067 N-P 0.1517 F-L 0.2775 B-Q 0.4573 H-O 0.4443 B-G 0.5536 H-K 0.1156 D-M 0.0836 B-E 0.17 A-M 0.4932 B-I 0.0371 K-O 0.4563 I-Q 0.4875 E-I 0.1383 G-O 0.1003 B-L 0.6005 F-J 0.6772 C-Q 0.0412 K-M 0.1107 C-N 0.2927 B-N 0.4535 K-P 0.0908 N-Q 0.2771 C-R 0.3839 G-H 0.4239 C-I 0.5287 H-P 0.134 E-L 0.6149 Use Dijkstra’s algorithm to solve for the shortest path from D to B, explaining each step clearly and systematically.
<think> Step 1: Initialization Initial distances: {'A': inf, 'B': inf, 'C': inf, 'D': 0, 'E': inf, 'F': inf, 'G': inf, 'H': inf, 'I': inf, 'J': inf, 'K': inf, 'L': inf, 'M': inf, 'N': inf, 'O': inf, 'P': inf, 'Q': inf, 'R': inf} Initial previous: {'A': None, 'B': None, 'C': None, 'D': None, 'E': None, 'F': None, 'G': None, 'H': None, 'I': None, 'J': None, 'K': None, 'L': None, 'M': None, 'N': None, 'O': None, 'P': None, 'Q': None, 'R': None} Set distance[D] = 0 Initial priority queue: [(0, 'D')] Step 2: Extract minimum from priority queue Popped node D with distance 0 Mark D as visited Visited set: {'D'} Checking neighbours of D Inspect edge D -> K (weight 0.1375) New possible distance = 0 + 0.1375 = 0.1375 Update: 0.1375 < inf Updated distance[K] = 0.1375 Updated previous[K] = D Pushed (0.1375, K) to queue Inspect edge D -> J (weight 0.2434) New possible distance = 0 + 0.2434 = 0.2434 Update: 0.2434 < inf Updated distance[J] = 0.2434 Updated previous[J] = D Pushed (0.2434, J) to queue Inspect edge D -> M (weight 0.0836) New possible distance = 0 + 0.0836 = 0.0836 Update: 0.0836 < inf Updated distance[M] = 0.0836 Updated previous[M] = D Pushed (0.0836, M) to queue Inspect edge D -> P (weight 0.1208) New possible distance = 0 + 0.1208 = 0.1208 Update: 0.1208 < inf Updated distance[P] = 0.1208 Updated previous[P] = D Pushed (0.1208, P) to queue Inspect edge D -> R (weight 0.1572) New possible distance = 0 + 0.1572 = 0.1572 Update: 0.1572 < inf Updated distance[R] = 0.1572 Updated previous[R] = D Pushed (0.1572, R) to queue Priority queue now: [(0.0836, 'M'), (0.1208, 'P'), (0.1375, 'K'), (0.2434, 'J'), (0.1572, 'R')] Step 3: Extract minimum from priority queue Popped node M with distance 0.0836 Mark M as visited Visited set: {'D', 'M'} Checking neighbours of M Inspect edge M -> K (weight 0.1107) New possible distance = 0.0836 + 0.1107 = 0.1943 No update needed (current best: 0.1375) Inspect edge M -> D (weight 0.0836) Neighbour D already visited, skipping. Inspect edge M -> J (weight 0.2069) New possible distance = 0.0836 + 0.2069 = 0.2905 No update needed (current best: 0.2434) Inspect edge M -> A (weight 0.4932) New possible distance = 0.0836 + 0.4932 = 0.5768 Update: 0.5768 < inf Updated distance[A] = 0.5768 Updated previous[A] = M Pushed (0.5768, A) to queue Priority queue now: [(0.1208, 'P'), (0.1572, 'R'), (0.1375, 'K'), (0.2434, 'J'), (0.5768, 'A')] Step 4: Extract minimum from priority queue Popped node P with distance 0.1208 Mark P as visited Visited set: {'P', 'D', 'M'} Checking neighbours of P Inspect edge P -> K (weight 0.0908) New possible distance = 0.1208 + 0.0908 = 0.2116 No update needed (current best: 0.1375) Inspect edge P -> R (weight 0.2084) New possible distance = 0.1208 + 0.2084 = 0.3292 No update needed (current best: 0.1572) Inspect edge P -> D (weight 0.1208) Neighbour D already visited, skipping. Inspect edge P -> H (weight 0.134) New possible distance = 0.1208 + 0.134 = 0.2548 Update: 0.2548 < inf Updated distance[H] = 0.2548 Updated previous[H] = P Pushed (0.2548, H) to queue Inspect edge P -> C (weight 0.3288) New possible distance = 0.1208 + 0.3288 = 0.4496 Update: 0.4496 < inf Updated distance[C] = 0.4496 Updated previous[C] = P Pushed (0.4496, C) to queue Inspect edge P -> N (weight 0.1517) New possible distance = 0.1208 + 0.1517 = 0.2725 Update: 0.2725 < inf Updated distance[N] = 0.2725 Updated previous[N] = P Pushed (0.2725, N) to queue Priority queue now: [(0.1375, 'K'), (0.1572, 'R'), (0.2725, 'N'), (0.2434, 'J'), (0.2548, 'H'), (0.5768, 'A'), (0.4496, 'C')] Step 5: Extract minimum from priority queue Popped node K with distance 0.1375 Mark K as visited Visited set: {'P', 'K', 'D', 'M'} Checking neighbours of K Inspect edge K -> D (weight 0.1375) Neighbour D already visited, skipping. Inspect edge K -> M (weight 0.1107) Neighbour M already visited, skipping. Inspect edge K -> P (weight 0.0908) Neighbour P already visited, skipping. Inspect edge K -> H (weight 0.1156) New possible distance = 0.1375 + 0.1156 = 0.2531 Update: 0.2531 < 0.2548 Updated distance[H] = 0.2531 Updated previous[H] = K Pushed (0.2531, H) to queue Inspect edge K -> A (weight 0.484) New possible distance = 0.1375 + 0.484 = 0.6214999999999999 No update needed (current best: 0.5768) Inspect edge K -> O (weight 0.4563) New possible distance = 0.1375 + 0.4563 = 0.5938 Update: 0.5938 < inf Updated distance[O] = 0.5938 Updated previous[O] = K Pushed (0.5938, O) to queue Priority queue now: [(0.1572, 'R'), (0.2434, 'J'), (0.2531, 'H'), (0.4496, 'C'), (0.2548, 'H'), (0.5768, 'A'), (0.2725, 'N'), (0.5938, 'O')] Step 6: Extract minimum from priority queue Popped node R with distance 0.1572 Mark R as visited Visited set: {'K', 'M', 'D', 'R', 'P'} Checking neighbours of R Inspect edge R -> J (weight 0.3407) New possible distance = 0.1572 + 0.3407 = 0.4979 No update needed (current best: 0.2434) Inspect edge R -> C (weight 0.3839) New possible distance = 0.1572 + 0.3839 = 0.5411 No update needed (current best: 0.4496) Inspect edge R -> P (weight 0.2084) Neighbour P already visited, skipping. Inspect edge R -> D (weight 0.1572) Neighbour D already visited, skipping. Priority queue now: [(0.2434, 'J'), (0.2548, 'H'), (0.2531, 'H'), (0.4496, 'C'), (0.5938, 'O'), (0.5768, 'A'), (0.2725, 'N')] Step 7: Extract minimum from priority queue Popped node J with distance 0.2434 Mark J as visited Visited set: {'K', 'M', 'D', 'R', 'J', 'P'} Checking neighbours of J Inspect edge J -> R (weight 0.3407) Neighbour R already visited, skipping. Inspect edge J -> D (weight 0.2434) Neighbour D already visited, skipping. Inspect edge J -> F (weight 0.6772) New possible distance = 0.2434 + 0.6772 = 0.9206000000000001 Update: 0.9206000000000001 < inf Updated distance[F] = 0.9206000000000001 Updated previous[F] = J Pushed (0.9206000000000001, F) to queue Inspect edge J -> M (weight 0.2069) Neighbour M already visited, skipping. Inspect edge J -> A (weight 0.5227) New possible distance = 0.2434 + 0.5227 = 0.7661 No update needed (current best: 0.5768) Priority queue now: [(0.2531, 'H'), (0.2548, 'H'), (0.2725, 'N'), (0.4496, 'C'), (0.5938, 'O'), (0.5768, 'A'), (0.9206000000000001, 'F')] Step 8: Extract minimum from priority queue Popped node H with distance 0.2531 Mark H as visited Visited set: {'K', 'M', 'D', 'H', 'R', 'J', 'P'} Checking neighbours of H Inspect edge H -> K (weight 0.1156) Neighbour K already visited, skipping. Inspect edge H -> N (weight 0.0583) New possible distance = 0.2531 + 0.0583 = 0.3114 No update needed (current best: 0.2725) Inspect edge H -> G (weight 0.4239) New possible distance = 0.2531 + 0.4239 = 0.677 Update: 0.677 < inf Updated distance[G] = 0.677 Updated previous[G] = H Pushed (0.677, G) to queue Inspect edge H -> P (weight 0.134) Neighbour P already visited, skipping. Inspect edge H -> O (weight 0.4443) New possible distance = 0.2531 + 0.4443 = 0.6974 No update needed (current best: 0.5938) Priority queue now: [(0.2548, 'H'), (0.4496, 'C'), (0.2725, 'N'), (0.9206000000000001, 'F'), (0.5938, 'O'), (0.5768, 'A'), (0.677, 'G')] Step 9: Extract minimum from priority queue Popped node H with distance 0.2548 Node H already visited, skipping. Step 10: Extract minimum from priority queue Popped node N with distance 0.2725 Mark N as visited Visited set: {'K', 'M', 'N', 'D', 'H', 'R', 'J', 'P'} Checking neighbours of N Inspect edge N -> H (weight 0.0583) Neighbour H already visited, skipping. Inspect edge N -> Q (weight 0.2771) New possible distance = 0.2725 + 0.2771 = 0.5496000000000001 Update: 0.5496000000000001 < inf Updated distance[Q] = 0.5496000000000001 Updated previous[Q] = N Pushed (0.5496000000000001, Q) to queue Inspect edge N -> C (weight 0.2927) New possible distance = 0.2725 + 0.2927 = 0.5652 No update needed (current best: 0.4496) Inspect edge N -> G (weight 0.4562) New possible distance = 0.2725 + 0.4562 = 0.7287 No update needed (current best: 0.677) Inspect edge N -> B (weight 0.4535) New possible distance = 0.2725 + 0.4535 = 0.726 Update: 0.726 < inf Updated distance[B] = 0.726 Updated previous[B] = N Pushed (0.726, B) to queue Inspect edge N -> P (weight 0.1517) Neighbour P already visited, skipping. Priority queue now: [(0.4496, 'C'), (0.5938, 'O'), (0.5496000000000001, 'Q'), (0.9206000000000001, 'F'), (0.677, 'G'), (0.5768, 'A'), (0.726, 'B')] Step 11: Extract minimum from priority queue Popped node C with distance 0.4496 Mark C as visited Visited set: {'K', 'M', 'N', 'D', 'C', 'H', 'R', 'J', 'P'} Checking neighbours of C Inspect edge C -> I (weight 0.5287) New possible distance = 0.4496 + 0.5287 = 0.9783 Update: 0.9783 < inf Updated distance[I] = 0.9783 Updated previous[I] = C Pushed (0.9783, I) to queue Inspect edge C -> R (weight 0.3839) Neighbour R already visited, skipping. Inspect edge C -> Q (weight 0.0412) New possible distance = 0.4496 + 0.0412 = 0.4908 Update: 0.4908 < 0.5496000000000001 Updated distance[Q] = 0.4908 Updated previous[Q] = C Pushed (0.4908, Q) to queue Inspect edge C -> N (weight 0.2927) Neighbour N already visited, skipping. Inspect edge C -> P (weight 0.3288) Neighbour P already visited, skipping. Priority queue now: [(0.4908, 'Q'), (0.5496000000000001, 'Q'), (0.5768, 'A'), (0.5938, 'O'), (0.677, 'G'), (0.726, 'B'), (0.9783, 'I'), (0.9206000000000001, 'F')] Step 12: Extract minimum from priority queue Popped node Q with distance 0.4908 Mark Q as visited Visited set: {'K', 'M', 'N', 'D', 'Q', 'C', 'H', 'R', 'J', 'P'} Checking neighbours of Q Inspect edge Q -> C (weight 0.0412) Neighbour C already visited, skipping. Inspect edge Q -> N (weight 0.2771) Neighbour N already visited, skipping. Inspect edge Q -> I (weight 0.4875) New possible distance = 0.4908 + 0.4875 = 0.9783 No update needed (current best: 0.9783) Inspect edge Q -> B (weight 0.4573) New possible distance = 0.4908 + 0.4573 = 0.9480999999999999 No update needed (current best: 0.726) Priority queue now: [(0.5496000000000001, 'Q'), (0.5938, 'O'), (0.5768, 'A'), (0.9206000000000001, 'F'), (0.677, 'G'), (0.726, 'B'), (0.9783, 'I')] Step 13: Extract minimum from priority queue Popped node Q with distance 0.5496000000000001 Node Q already visited, skipping. Step 14: Extract minimum from priority queue Popped node A with distance 0.5768 Mark A as visited Visited set: {'K', 'A', 'M', 'N', 'D', 'Q', 'C', 'H', 'R', 'J', 'P'} Checking neighbours of A Inspect edge A -> F (weight 0.1571) New possible distance = 0.5768 + 0.1571 = 0.7339 Update: 0.7339 < 0.9206000000000001 Updated distance[F] = 0.7339 Updated previous[F] = A Pushed (0.7339, F) to queue Inspect edge A -> O (weight 0.1481) New possible distance = 0.5768 + 0.1481 = 0.7249 No update needed (current best: 0.5938) Inspect edge A -> K (weight 0.484) Neighbour K already visited, skipping. Inspect edge A -> J (weight 0.5227) Neighbour J already visited, skipping. Inspect edge A -> M (weight 0.4932) Neighbour M already visited, skipping. Priority queue now: [(0.5938, 'O'), (0.677, 'G'), (0.726, 'B'), (0.9206000000000001, 'F'), (0.9783, 'I'), (0.7339, 'F')] Step 15: Extract minimum from priority queue Popped node O with distance 0.5938 Mark O as visited Visited set: {'K', 'A', 'M', 'N', 'D', 'Q', 'C', 'H', 'O', 'R', 'J', 'P'} Checking neighbours of O Inspect edge O -> L (weight 0.1978) New possible distance = 0.5938 + 0.1978 = 0.7916 Update: 0.7916 < inf Updated distance[L] = 0.7916 Updated previous[L] = O Pushed (0.7916, L) to queue Inspect edge O -> A (weight 0.1481) Neighbour A already visited, skipping. Inspect edge O -> G (weight 0.1003) New possible distance = 0.5938 + 0.1003 = 0.6940999999999999 No update needed (current best: 0.677) Inspect edge O -> K (weight 0.4563) Neighbour K already visited, skipping. Inspect edge O -> F (weight 0.2067) New possible distance = 0.5938 + 0.2067 = 0.8005 No update needed (current best: 0.7339) Inspect edge O -> H (weight 0.4443) Neighbour H already visited, skipping. Priority queue now: [(0.677, 'G'), (0.7339, 'F'), (0.726, 'B'), (0.9206000000000001, 'F'), (0.9783, 'I'), (0.7916, 'L')] Step 16: Extract minimum from priority queue Popped node G with distance 0.677 Mark G as visited Visited set: {'K', 'A', 'M', 'G', 'N', 'D', 'Q', 'C', 'H', 'O', 'R', 'J', 'P'} Checking neighbours of G Inspect edge G -> B (weight 0.5536) New possible distance = 0.677 + 0.5536 = 1.2306 No update needed (current best: 0.726) Inspect edge G -> L (weight 0.1469) New possible distance = 0.677 + 0.1469 = 0.8239000000000001 No update needed (current best: 0.7916) Inspect edge G -> O (weight 0.1003) Neighbour O already visited, skipping. Inspect edge G -> H (weight 0.4239) Neighbour H already visited, skipping. Inspect edge G -> N (weight 0.4562) Neighbour N already visited, skipping. Priority queue now: [(0.726, 'B'), (0.7339, 'F'), (0.7916, 'L'), (0.9206000000000001, 'F'), (0.9783, 'I')] Step 17: Extract minimum from priority queue Popped node B with distance 0.726 Mark B as visited Visited set: {'B', 'K', 'A', 'M', 'G', 'N', 'D', 'Q', 'C', 'H', 'O', 'R', 'J', 'P'} Reached target node B, stopping early. Step Final: Reconstruct path Shortest path: D -> P -> N -> B Total distance: 0.726 </think> <response>The shortest path from D to B is D -> P -> N -> B. Total distance 0.726.</response>
18
5f2ccb55-498a-440a-b94b-25a395a2caa7
The following data gives the edge weights of an undirected planar graph: A-C 0.1085 B-C 0.4258 A-B 0.4929 Use Dijkstra’s algorithm to solve for the shortest path from B to C, explaining each step clearly and systematically.
<think> Step 1: Initialization Initial distances: {'A': inf, 'B': 0, 'C': inf} Initial previous: {'A': None, 'B': None, 'C': None} Set distance[B] = 0 Initial priority queue: [(0, 'B')] Step 2: Extract minimum from priority queue Popped node B with distance 0 Mark B as visited Visited set: {'B'} Checking neighbours of B Inspect edge B -> A (weight 0.4929) New possible distance = 0 + 0.4929 = 0.4929 Update: 0.4929 < inf Updated distance[A] = 0.4929 Updated previous[A] = B Pushed (0.4929, A) to queue Inspect edge B -> C (weight 0.4258) New possible distance = 0 + 0.4258 = 0.4258 Update: 0.4258 < inf Updated distance[C] = 0.4258 Updated previous[C] = B Pushed (0.4258, C) to queue Priority queue now: [(0.4258, 'C'), (0.4929, 'A')] Step 3: Extract minimum from priority queue Popped node C with distance 0.4258 Mark C as visited Visited set: {'C', 'B'} Reached target node C, stopping early. Step Final: Reconstruct path Shortest path: B -> C Total distance: 0.4258 </think> <response>The shortest path from B to C is B -> C. Total distance 0.4258.</response>
3
521c9f8b-ddec-400d-b612-c90e70c75d4e
Consider the following edge lengths for an undirected planar graph: B-C 0.9228 A-C 0.8099 A-B 0.7344 Determine the shortest path from A to B by implementing Dijkstra’s algorithm and explain each stage in detail.
<think> Step 1: Initialization Initial distances: {'A': 0, 'B': inf, 'C': inf} Initial previous: {'A': None, 'B': None, 'C': None} Set distance[A] = 0 Initial priority queue: [(0, 'A')] Step 2: Extract minimum from priority queue Popped node A with distance 0 Mark A as visited Visited set: {'A'} Checking neighbours of A Inspect edge A -> B (weight 0.7344) New possible distance = 0 + 0.7344 = 0.7344 Update: 0.7344 < inf Updated distance[B] = 0.7344 Updated previous[B] = A Pushed (0.7344, B) to queue Inspect edge A -> C (weight 0.8099) New possible distance = 0 + 0.8099 = 0.8099 Update: 0.8099 < inf Updated distance[C] = 0.8099 Updated previous[C] = A Pushed (0.8099, C) to queue Priority queue now: [(0.7344, 'B'), (0.8099, 'C')] Step 3: Extract minimum from priority queue Popped node B with distance 0.7344 Mark B as visited Visited set: {'A', 'B'} Reached target node B, stopping early. Step Final: Reconstruct path Shortest path: A -> B Total distance: 0.7344 </think> <response>The shortest path from A to B is A -> B. Total distance 0.7344.</response>
3
1e65d8dc-6726-468f-9da5-3f52511c4d1e
Below are the edge weights for an undirected planar graph: A-I 0.2223 B-M 0.093 D-R 0.1953 D-Q 0.4538 I-J 0.431 H-K 0.4285 E-J 0.2001 H-L 0.1854 C-H 0.3143 P-Q 0.56 D-L 0.363 D-P 0.1262 L-M 0.103 O-Q 0.3692 C-L 0.4979 F-N 0.095 F-I 0.2716 P-S 0.9457 E-O 0.2721 A-G 0.1089 B-H 0.1622 E-Q 0.2147 A-K 0.1464 B-R 0.1296 J-K 0.2932 H-M 0.1083 C-K 0.2469 G-J 0.2907 A-C 0.3222 Q-S 0.4031 J-Q 0.2662 O-R 0.0978 C-F 0.3504 A-F 0.1316 E-K 0.3875 I-S 0.6592 G-K 0.1337 L-P 0.4366 M-R 0.1815 B-E 0.2666 J-S 0.4603 L-R 0.2049 G-I 0.1998 C-N 0.3865 D-O 0.1393 I-N 0.344 E-H 0.377 B-O 0.205 Apply Dijkstra’s algorithm to compute the shortest route from M to G, providing a detailed explanation of every step.
<think> Step 1: Initialization Initial distances: {'A': inf, 'B': inf, 'C': inf, 'D': inf, 'E': inf, 'F': inf, 'G': inf, 'H': inf, 'I': inf, 'J': inf, 'K': inf, 'L': inf, 'M': 0, 'N': inf, 'O': inf, 'P': inf, 'Q': inf, 'R': inf, 'S': inf} Initial previous: {'A': None, 'B': None, 'C': None, 'D': None, 'E': None, 'F': None, 'G': None, 'H': None, 'I': None, 'J': None, 'K': None, 'L': None, 'M': None, 'N': None, 'O': None, 'P': None, 'Q': None, 'R': None, 'S': None} Set distance[M] = 0 Initial priority queue: [(0, 'M')] Step 2: Extract minimum from priority queue Popped node M with distance 0 Mark M as visited Visited set: {'M'} Checking neighbours of M Inspect edge M -> B (weight 0.093) New possible distance = 0 + 0.093 = 0.093 Update: 0.093 < inf Updated distance[B] = 0.093 Updated previous[B] = M Pushed (0.093, B) to queue Inspect edge M -> H (weight 0.1083) New possible distance = 0 + 0.1083 = 0.1083 Update: 0.1083 < inf Updated distance[H] = 0.1083 Updated previous[H] = M Pushed (0.1083, H) to queue Inspect edge M -> R (weight 0.1815) New possible distance = 0 + 0.1815 = 0.1815 Update: 0.1815 < inf Updated distance[R] = 0.1815 Updated previous[R] = M Pushed (0.1815, R) to queue Inspect edge M -> L (weight 0.103) New possible distance = 0 + 0.103 = 0.103 Update: 0.103 < inf Updated distance[L] = 0.103 Updated previous[L] = M Pushed (0.103, L) to queue Priority queue now: [(0.093, 'B'), (0.103, 'L'), (0.1815, 'R'), (0.1083, 'H')] Step 3: Extract minimum from priority queue Popped node B with distance 0.093 Mark B as visited Visited set: {'M', 'B'} Checking neighbours of B Inspect edge B -> M (weight 0.093) Neighbour M already visited, skipping. Inspect edge B -> O (weight 0.205) New possible distance = 0.093 + 0.205 = 0.298 Update: 0.298 < inf Updated distance[O] = 0.298 Updated previous[O] = B Pushed (0.298, O) to queue Inspect edge B -> R (weight 0.1296) New possible distance = 0.093 + 0.1296 = 0.2226 No update needed (current best: 0.1815) Inspect edge B -> E (weight 0.2666) New possible distance = 0.093 + 0.2666 = 0.35960000000000003 Update: 0.35960000000000003 < inf Updated distance[E] = 0.35960000000000003 Updated previous[E] = B Pushed (0.35960000000000003, E) to queue Inspect edge B -> H (weight 0.1622) New possible distance = 0.093 + 0.1622 = 0.2552 No update needed (current best: 0.1083) Priority queue now: [(0.103, 'L'), (0.1083, 'H'), (0.1815, 'R'), (0.298, 'O'), (0.35960000000000003, 'E')] Step 4: Extract minimum from priority queue Popped node L with distance 0.103 Mark L as visited Visited set: {'L', 'M', 'B'} Checking neighbours of L Inspect edge L -> C (weight 0.4979) New possible distance = 0.103 + 0.4979 = 0.6009 Update: 0.6009 < inf Updated distance[C] = 0.6009 Updated previous[C] = L Pushed (0.6009, C) to queue Inspect edge L -> R (weight 0.2049) New possible distance = 0.103 + 0.2049 = 0.3079 No update needed (current best: 0.1815) Inspect edge L -> D (weight 0.363) New possible distance = 0.103 + 0.363 = 0.46599999999999997 Update: 0.46599999999999997 < inf Updated distance[D] = 0.46599999999999997 Updated previous[D] = L Pushed (0.46599999999999997, D) to queue Inspect edge L -> M (weight 0.103) Neighbour M already visited, skipping. Inspect edge L -> P (weight 0.4366) New possible distance = 0.103 + 0.4366 = 0.5396 Update: 0.5396 < inf Updated distance[P] = 0.5396 Updated previous[P] = L Pushed (0.5396, P) to queue Inspect edge L -> H (weight 0.1854) New possible distance = 0.103 + 0.1854 = 0.2884 No update needed (current best: 0.1083) Priority queue now: [(0.1083, 'H'), (0.298, 'O'), (0.1815, 'R'), (0.35960000000000003, 'E'), (0.6009, 'C'), (0.46599999999999997, 'D'), (0.5396, 'P')] Step 5: Extract minimum from priority queue Popped node H with distance 0.1083 Mark H as visited Visited set: {'L', 'M', 'H', 'B'} Checking neighbours of H Inspect edge H -> K (weight 0.4285) New possible distance = 0.1083 + 0.4285 = 0.5367999999999999 Update: 0.5367999999999999 < inf Updated distance[K] = 0.5367999999999999 Updated previous[K] = H Pushed (0.5367999999999999, K) to queue Inspect edge H -> C (weight 0.3143) New possible distance = 0.1083 + 0.3143 = 0.42260000000000003 Update: 0.42260000000000003 < 0.6009 Updated distance[C] = 0.42260000000000003 Updated previous[C] = H Pushed (0.42260000000000003, C) to queue Inspect edge H -> M (weight 0.1083) Neighbour M already visited, skipping. Inspect edge H -> E (weight 0.377) New possible distance = 0.1083 + 0.377 = 0.4853 No update needed (current best: 0.35960000000000003) Inspect edge H -> B (weight 0.1622) Neighbour B already visited, skipping. Inspect edge H -> L (weight 0.1854) Neighbour L already visited, skipping. Priority queue now: [(0.1815, 'R'), (0.298, 'O'), (0.46599999999999997, 'D'), (0.35960000000000003, 'E'), (0.6009, 'C'), (0.5396, 'P'), (0.5367999999999999, 'K'), (0.42260000000000003, 'C')] Step 6: Extract minimum from priority queue Popped node R with distance 0.1815 Mark R as visited Visited set: {'M', 'L', 'H', 'B', 'R'} Checking neighbours of R Inspect edge R -> L (weight 0.2049) Neighbour L already visited, skipping. Inspect edge R -> B (weight 0.1296) Neighbour B already visited, skipping. Inspect edge R -> M (weight 0.1815) Neighbour M already visited, skipping. Inspect edge R -> D (weight 0.1953) New possible distance = 0.1815 + 0.1953 = 0.3768 Update: 0.3768 < 0.46599999999999997 Updated distance[D] = 0.3768 Updated previous[D] = R Pushed (0.3768, D) to queue Inspect edge R -> O (weight 0.0978) New possible distance = 0.1815 + 0.0978 = 0.2793 Update: 0.2793 < 0.298 Updated distance[O] = 0.2793 Updated previous[O] = R Pushed (0.2793, O) to queue Priority queue now: [(0.2793, 'O'), (0.298, 'O'), (0.46599999999999997, 'D'), (0.35960000000000003, 'E'), (0.6009, 'C'), (0.5396, 'P'), (0.5367999999999999, 'K'), (0.42260000000000003, 'C'), (0.3768, 'D')] Step 7: Extract minimum from priority queue Popped node O with distance 0.2793 Mark O as visited Visited set: {'M', 'L', 'H', 'B', 'R', 'O'} Checking neighbours of O Inspect edge O -> Q (weight 0.3692) New possible distance = 0.2793 + 0.3692 = 0.6485 Update: 0.6485 < inf Updated distance[Q] = 0.6485 Updated previous[Q] = O Pushed (0.6485, Q) to queue Inspect edge O -> E (weight 0.2721) New possible distance = 0.2793 + 0.2721 = 0.5514 No update needed (current best: 0.35960000000000003) Inspect edge O -> B (weight 0.205) Neighbour B already visited, skipping. Inspect edge O -> D (weight 0.1393) New possible distance = 0.2793 + 0.1393 = 0.41859999999999997 No update needed (current best: 0.3768) Inspect edge O -> R (weight 0.0978) Neighbour R already visited, skipping. Priority queue now: [(0.298, 'O'), (0.35960000000000003, 'E'), (0.46599999999999997, 'D'), (0.3768, 'D'), (0.6009, 'C'), (0.5396, 'P'), (0.5367999999999999, 'K'), (0.42260000000000003, 'C'), (0.6485, 'Q')] Step 8: Extract minimum from priority queue Popped node O with distance 0.298 Node O already visited, skipping. Step 9: Extract minimum from priority queue Popped node E with distance 0.35960000000000003 Mark E as visited Visited set: {'M', 'L', 'E', 'H', 'B', 'R', 'O'} Checking neighbours of E Inspect edge E -> J (weight 0.2001) New possible distance = 0.35960000000000003 + 0.2001 = 0.5597000000000001 Update: 0.5597000000000001 < inf Updated distance[J] = 0.5597000000000001 Updated previous[J] = E Pushed (0.5597000000000001, J) to queue Inspect edge E -> O (weight 0.2721) Neighbour O already visited, skipping. Inspect edge E -> H (weight 0.377) Neighbour H already visited, skipping. Inspect edge E -> K (weight 0.3875) New possible distance = 0.35960000000000003 + 0.3875 = 0.7471000000000001 No update needed (current best: 0.5367999999999999) Inspect edge E -> Q (weight 0.2147) New possible distance = 0.35960000000000003 + 0.2147 = 0.5743 Update: 0.5743 < 0.6485 Updated distance[Q] = 0.5743 Updated previous[Q] = E Pushed (0.5743, Q) to queue Inspect edge E -> B (weight 0.2666) Neighbour B already visited, skipping. Priority queue now: [(0.3768, 'D'), (0.42260000000000003, 'C'), (0.46599999999999997, 'D'), (0.5597000000000001, 'J'), (0.6009, 'C'), (0.5396, 'P'), (0.5367999999999999, 'K'), (0.6485, 'Q'), (0.5743, 'Q')] Step 10: Extract minimum from priority queue Popped node D with distance 0.3768 Mark D as visited Visited set: {'M', 'L', 'D', 'E', 'H', 'B', 'R', 'O'} Checking neighbours of D Inspect edge D -> Q (weight 0.4538) New possible distance = 0.3768 + 0.4538 = 0.8306 No update needed (current best: 0.5743) Inspect edge D -> P (weight 0.1262) New possible distance = 0.3768 + 0.1262 = 0.503 Update: 0.503 < 0.5396 Updated distance[P] = 0.503 Updated previous[P] = D Pushed (0.503, P) to queue Inspect edge D -> L (weight 0.363) Neighbour L already visited, skipping. Inspect edge D -> O (weight 0.1393) Neighbour O already visited, skipping. Inspect edge D -> R (weight 0.1953) Neighbour R already visited, skipping. Priority queue now: [(0.42260000000000003, 'C'), (0.503, 'P'), (0.46599999999999997, 'D'), (0.5597000000000001, 'J'), (0.6009, 'C'), (0.5396, 'P'), (0.5367999999999999, 'K'), (0.6485, 'Q'), (0.5743, 'Q')] Step 11: Extract minimum from priority queue Popped node C with distance 0.42260000000000003 Mark C as visited Visited set: {'M', 'L', 'D', 'E', 'C', 'H', 'B', 'R', 'O'} Checking neighbours of C Inspect edge C -> A (weight 0.3222) New possible distance = 0.42260000000000003 + 0.3222 = 0.7448 Update: 0.7448 < inf Updated distance[A] = 0.7448 Updated previous[A] = C Pushed (0.7448, A) to queue Inspect edge C -> F (weight 0.3504) New possible distance = 0.42260000000000003 + 0.3504 = 0.773 Update: 0.773 < inf Updated distance[F] = 0.773 Updated previous[F] = C Pushed (0.773, F) to queue Inspect edge C -> L (weight 0.4979) Neighbour L already visited, skipping. Inspect edge C -> H (weight 0.3143) Neighbour H already visited, skipping. Inspect edge C -> K (weight 0.2469) New possible distance = 0.42260000000000003 + 0.2469 = 0.6695 No update needed (current best: 0.5367999999999999) Inspect edge C -> N (weight 0.3865) New possible distance = 0.42260000000000003 + 0.3865 = 0.8091 Update: 0.8091 < inf Updated distance[N] = 0.8091 Updated previous[N] = C Pushed (0.8091, N) to queue Priority queue now: [(0.46599999999999997, 'D'), (0.503, 'P'), (0.5367999999999999, 'K'), (0.5597000000000001, 'J'), (0.6009, 'C'), (0.5396, 'P'), (0.5743, 'Q'), (0.6485, 'Q'), (0.7448, 'A'), (0.773, 'F'), (0.8091, 'N')] Step 12: Extract minimum from priority queue Popped node D with distance 0.46599999999999997 Node D already visited, skipping. Step 13: Extract minimum from priority queue Popped node P with distance 0.503 Mark P as visited Visited set: {'M', 'L', 'D', 'E', 'C', 'H', 'B', 'R', 'O', 'P'} Checking neighbours of P Inspect edge P -> D (weight 0.1262) Neighbour D already visited, skipping. Inspect edge P -> Q (weight 0.56) New possible distance = 0.503 + 0.56 = 1.0630000000000002 No update needed (current best: 0.5743) Inspect edge P -> L (weight 0.4366) Neighbour L already visited, skipping. Inspect edge P -> S (weight 0.9457) New possible distance = 0.503 + 0.9457 = 1.4487 Update: 1.4487 < inf Updated distance[S] = 1.4487 Updated previous[S] = P Pushed (1.4487, S) to queue Priority queue now: [(0.5367999999999999, 'K'), (0.5597000000000001, 'J'), (0.5396, 'P'), (0.6485, 'Q'), (0.6009, 'C'), (0.773, 'F'), (0.5743, 'Q'), (0.8091, 'N'), (0.7448, 'A'), (1.4487, 'S')] Step 14: Extract minimum from priority queue Popped node K with distance 0.5367999999999999 Mark K as visited Visited set: {'K', 'M', 'L', 'D', 'E', 'C', 'H', 'B', 'R', 'O', 'P'} Checking neighbours of K Inspect edge K -> H (weight 0.4285) Neighbour H already visited, skipping. Inspect edge K -> J (weight 0.2932) New possible distance = 0.5367999999999999 + 0.2932 = 0.83 No update needed (current best: 0.5597000000000001) Inspect edge K -> A (weight 0.1464) New possible distance = 0.5367999999999999 + 0.1464 = 0.6831999999999999 Update: 0.6831999999999999 < 0.7448 Updated distance[A] = 0.6831999999999999 Updated previous[A] = K Pushed (0.6831999999999999, A) to queue Inspect edge K -> C (weight 0.2469) Neighbour C already visited, skipping. Inspect edge K -> G (weight 0.1337) New possible distance = 0.5367999999999999 + 0.1337 = 0.6705 Update: 0.6705 < inf Updated distance[G] = 0.6705 Updated previous[G] = K Pushed (0.6705, G) to queue Inspect edge K -> E (weight 0.3875) Neighbour E already visited, skipping. Priority queue now: [(0.5396, 'P'), (0.5597000000000001, 'J'), (0.5743, 'Q'), (0.6485, 'Q'), (0.6009, 'C'), (0.773, 'F'), (1.4487, 'S'), (0.8091, 'N'), (0.7448, 'A'), (0.6831999999999999, 'A'), (0.6705, 'G')] Step 15: Extract minimum from priority queue Popped node P with distance 0.5396 Node P already visited, skipping. Step 16: Extract minimum from priority queue Popped node J with distance 0.5597000000000001 Mark J as visited Visited set: {'K', 'M', 'L', 'D', 'J', 'E', 'C', 'H', 'B', 'R', 'O', 'P'} Checking neighbours of J Inspect edge J -> E (weight 0.2001) Neighbour E already visited, skipping. Inspect edge J -> I (weight 0.431) New possible distance = 0.5597000000000001 + 0.431 = 0.9907000000000001 Update: 0.9907000000000001 < inf Updated distance[I] = 0.9907000000000001 Updated previous[I] = J Pushed (0.9907000000000001, I) to queue Inspect edge J -> G (weight 0.2907) New possible distance = 0.5597000000000001 + 0.2907 = 0.8504 No update needed (current best: 0.6705) Inspect edge J -> K (weight 0.2932) Neighbour K already visited, skipping. Inspect edge J -> Q (weight 0.2662) New possible distance = 0.5597000000000001 + 0.2662 = 0.8259000000000001 No update needed (current best: 0.5743) Inspect edge J -> S (weight 0.4603) New possible distance = 0.5597000000000001 + 0.4603 = 1.02 Update: 1.02 < 1.4487 Updated distance[S] = 1.02 Updated previous[S] = J Pushed (1.02, S) to queue Priority queue now: [(0.5743, 'Q'), (0.6009, 'C'), (0.6831999999999999, 'A'), (0.6485, 'Q'), (0.6705, 'G'), (0.773, 'F'), (1.4487, 'S'), (0.8091, 'N'), (0.7448, 'A'), (0.9907000000000001, 'I'), (1.02, 'S')] Step 17: Extract minimum from priority queue Popped node Q with distance 0.5743 Mark Q as visited Visited set: {'K', 'M', 'L', 'D', 'J', 'Q', 'E', 'C', 'H', 'B', 'R', 'O', 'P'} Checking neighbours of Q Inspect edge Q -> O (weight 0.3692) Neighbour O already visited, skipping. Inspect edge Q -> D (weight 0.4538) Neighbour D already visited, skipping. Inspect edge Q -> J (weight 0.2662) Neighbour J already visited, skipping. Inspect edge Q -> P (weight 0.56) Neighbour P already visited, skipping. Inspect edge Q -> S (weight 0.4031) New possible distance = 0.5743 + 0.4031 = 0.9774 Update: 0.9774 < 1.02 Updated distance[S] = 0.9774 Updated previous[S] = Q Pushed (0.9774, S) to queue Inspect edge Q -> E (weight 0.2147) Neighbour E already visited, skipping. Priority queue now: [(0.6009, 'C'), (0.6485, 'Q'), (0.6831999999999999, 'A'), (0.7448, 'A'), (0.6705, 'G'), (0.773, 'F'), (1.4487, 'S'), (0.8091, 'N'), (1.02, 'S'), (0.9907000000000001, 'I'), (0.9774, 'S')] Step 18: Extract minimum from priority queue Popped node C with distance 0.6009 Node C already visited, skipping. Step 19: Extract minimum from priority queue Popped node Q with distance 0.6485 Node Q already visited, skipping. Step 20: Extract minimum from priority queue Popped node G with distance 0.6705 Mark G as visited Visited set: {'K', 'M', 'G', 'L', 'D', 'J', 'Q', 'E', 'C', 'H', 'B', 'R', 'O', 'P'} Reached target node G, stopping early. Step Final: Reconstruct path Shortest path: M -> H -> K -> G Total distance: 0.6705 </think> <response>The shortest path from M to G is M -> H -> K -> G. Total distance 0.6705.</response>
19
4f1cc5f8-ea21-4b2a-aa4d-efe3743de8ca
These are the edge measurements for an undirected planar graph: B-D 0.4235 A-B 0.323 D-J 0.3852 G-J 0.1695 D-G 0.4113 C-D 0.4888 D-E 0.4557 A-J 0.3538 E-F 0.454 B-J 0.0641 A-H 0.2346 H-I 0.6987 G-I 0.4958 E-I 0.3877 G-H 0.5439 A-C 0.2832 D-F 0.0408 E-G 0.367 A-G 0.4029 B-C 0.079 Determine the shortest path from node B to node F through Dijkstra’s algorithm, and provide a detailed breakdown of each step.
<think> Step 1: Initialization Initial distances: {'A': inf, 'B': 0, 'C': inf, 'D': inf, 'E': inf, 'F': inf, 'G': inf, 'H': inf, 'I': inf, 'J': inf} Initial previous: {'A': None, 'B': None, 'C': None, 'D': None, 'E': None, 'F': None, 'G': None, 'H': None, 'I': None, 'J': None} Set distance[B] = 0 Initial priority queue: [(0, 'B')] Step 2: Extract minimum from priority queue Popped node B with distance 0 Mark B as visited Visited set: {'B'} Checking neighbours of B Inspect edge B -> D (weight 0.4235) New possible distance = 0 + 0.4235 = 0.4235 Update: 0.4235 < inf Updated distance[D] = 0.4235 Updated previous[D] = B Pushed (0.4235, D) to queue Inspect edge B -> J (weight 0.0641) New possible distance = 0 + 0.0641 = 0.0641 Update: 0.0641 < inf Updated distance[J] = 0.0641 Updated previous[J] = B Pushed (0.0641, J) to queue Inspect edge B -> A (weight 0.323) New possible distance = 0 + 0.323 = 0.323 Update: 0.323 < inf Updated distance[A] = 0.323 Updated previous[A] = B Pushed (0.323, A) to queue Inspect edge B -> C (weight 0.079) New possible distance = 0 + 0.079 = 0.079 Update: 0.079 < inf Updated distance[C] = 0.079 Updated previous[C] = B Pushed (0.079, C) to queue Priority queue now: [(0.0641, 'J'), (0.079, 'C'), (0.323, 'A'), (0.4235, 'D')] Step 3: Extract minimum from priority queue Popped node J with distance 0.0641 Mark J as visited Visited set: {'J', 'B'} Checking neighbours of J Inspect edge J -> B (weight 0.0641) Neighbour B already visited, skipping. Inspect edge J -> D (weight 0.3852) New possible distance = 0.0641 + 0.3852 = 0.4493 No update needed (current best: 0.4235) Inspect edge J -> A (weight 0.3538) New possible distance = 0.0641 + 0.3538 = 0.4179 No update needed (current best: 0.323) Inspect edge J -> G (weight 0.1695) New possible distance = 0.0641 + 0.1695 = 0.23360000000000003 Update: 0.23360000000000003 < inf Updated distance[G] = 0.23360000000000003 Updated previous[G] = J Pushed (0.23360000000000003, G) to queue Priority queue now: [(0.079, 'C'), (0.23360000000000003, 'G'), (0.323, 'A'), (0.4235, 'D')] Step 4: Extract minimum from priority queue Popped node C with distance 0.079 Mark C as visited Visited set: {'J', 'C', 'B'} Checking neighbours of C Inspect edge C -> A (weight 0.2832) New possible distance = 0.079 + 0.2832 = 0.3622 No update needed (current best: 0.323) Inspect edge C -> B (weight 0.079) Neighbour B already visited, skipping. Inspect edge C -> D (weight 0.4888) New possible distance = 0.079 + 0.4888 = 0.5678 No update needed (current best: 0.4235) Priority queue now: [(0.23360000000000003, 'G'), (0.4235, 'D'), (0.323, 'A')] Step 5: Extract minimum from priority queue Popped node G with distance 0.23360000000000003 Mark G as visited Visited set: {'J', 'C', 'G', 'B'} Checking neighbours of G Inspect edge G -> E (weight 0.367) New possible distance = 0.23360000000000003 + 0.367 = 0.6006 Update: 0.6006 < inf Updated distance[E] = 0.6006 Updated previous[E] = G Pushed (0.6006, E) to queue Inspect edge G -> I (weight 0.4958) New possible distance = 0.23360000000000003 + 0.4958 = 0.7294 Update: 0.7294 < inf Updated distance[I] = 0.7294 Updated previous[I] = G Pushed (0.7294, I) to queue Inspect edge G -> D (weight 0.4113) New possible distance = 0.23360000000000003 + 0.4113 = 0.6449 No update needed (current best: 0.4235) Inspect edge G -> H (weight 0.5439) New possible distance = 0.23360000000000003 + 0.5439 = 0.7775000000000001 Update: 0.7775000000000001 < inf Updated distance[H] = 0.7775000000000001 Updated previous[H] = G Pushed (0.7775000000000001, H) to queue Inspect edge G -> A (weight 0.4029) New possible distance = 0.23360000000000003 + 0.4029 = 0.6365000000000001 No update needed (current best: 0.323) Inspect edge G -> J (weight 0.1695) Neighbour J already visited, skipping. Priority queue now: [(0.323, 'A'), (0.4235, 'D'), (0.6006, 'E'), (0.7294, 'I'), (0.7775000000000001, 'H')] Step 6: Extract minimum from priority queue Popped node A with distance 0.323 Mark A as visited Visited set: {'B', 'A', 'C', 'G', 'J'} Checking neighbours of A Inspect edge A -> C (weight 0.2832) Neighbour C already visited, skipping. Inspect edge A -> B (weight 0.323) Neighbour B already visited, skipping. Inspect edge A -> H (weight 0.2346) New possible distance = 0.323 + 0.2346 = 0.5576 Update: 0.5576 < 0.7775000000000001 Updated distance[H] = 0.5576 Updated previous[H] = A Pushed (0.5576, H) to queue Inspect edge A -> J (weight 0.3538) Neighbour J already visited, skipping. Inspect edge A -> G (weight 0.4029) Neighbour G already visited, skipping. Priority queue now: [(0.4235, 'D'), (0.5576, 'H'), (0.6006, 'E'), (0.7775000000000001, 'H'), (0.7294, 'I')] Step 7: Extract minimum from priority queue Popped node D with distance 0.4235 Mark D as visited Visited set: {'B', 'A', 'D', 'C', 'G', 'J'} Checking neighbours of D Inspect edge D -> E (weight 0.4557) New possible distance = 0.4235 + 0.4557 = 0.8792 No update needed (current best: 0.6006) Inspect edge D -> B (weight 0.4235) Neighbour B already visited, skipping. Inspect edge D -> J (weight 0.3852) Neighbour J already visited, skipping. Inspect edge D -> G (weight 0.4113) Neighbour G already visited, skipping. Inspect edge D -> F (weight 0.0408) New possible distance = 0.4235 + 0.0408 = 0.4643 Update: 0.4643 < inf Updated distance[F] = 0.4643 Updated previous[F] = D Pushed (0.4643, F) to queue Inspect edge D -> C (weight 0.4888) Neighbour C already visited, skipping. Priority queue now: [(0.4643, 'F'), (0.5576, 'H'), (0.6006, 'E'), (0.7775000000000001, 'H'), (0.7294, 'I')] Step 8: Extract minimum from priority queue Popped node F with distance 0.4643 Mark F as visited Visited set: {'B', 'A', 'D', 'C', 'G', 'J', 'F'} Reached target node F, stopping early. Step Final: Reconstruct path Shortest path: B -> D -> F Total distance: 0.4643 </think> <response>The shortest path from B to F is B -> D -> F. Total distance 0.4643.</response>
10
94d72068-224b-479f-9448-a189798bdb1c
These are the edge measurements for an undirected planar graph: A-C 0.8188 A-B 0.7441 B-C 0.8811 Determine the shortest path from node A to node B through Dijkstra’s algorithm, and provide a detailed breakdown of each step.
<think> Step 1: Initialization Initial distances: {'A': 0, 'B': inf, 'C': inf} Initial previous: {'A': None, 'B': None, 'C': None} Set distance[A] = 0 Initial priority queue: [(0, 'A')] Step 2: Extract minimum from priority queue Popped node A with distance 0 Mark A as visited Visited set: {'A'} Checking neighbours of A Inspect edge A -> B (weight 0.7441) New possible distance = 0 + 0.7441 = 0.7441 Update: 0.7441 < inf Updated distance[B] = 0.7441 Updated previous[B] = A Pushed (0.7441, B) to queue Inspect edge A -> C (weight 0.8188) New possible distance = 0 + 0.8188 = 0.8188 Update: 0.8188 < inf Updated distance[C] = 0.8188 Updated previous[C] = A Pushed (0.8188, C) to queue Priority queue now: [(0.7441, 'B'), (0.8188, 'C')] Step 3: Extract minimum from priority queue Popped node B with distance 0.7441 Mark B as visited Visited set: {'A', 'B'} Reached target node B, stopping early. Step Final: Reconstruct path Shortest path: A -> B Total distance: 0.7441 </think> <response>The shortest path from A to B is A -> B. Total distance 0.7441.</response>
3
5c6f963d-55fe-4cb0-aba3-5b40e29d169d
The following data gives the edge weights of an undirected planar graph: I-K 0.3432 H-I 0.4173 G-M 0.2789 A-O 0.391 D-R 0.3006 K-L 0.1214 G-K 0.2084 I-Q 0.1761 G-N 0.2548 P-R 0.4622 I-J 0.3928 D-E 0.2903 Q-R 0.4135 C-I 0.2401 F-N 0.0363 K-M 0.2474 B-P 0.4192 B-I 0.4364 G-I 0.374 E-K 0.202 G-H 0.308 F-J 0.3652 G-O 0.2099 D-M 0.6524 K-Q 0.3958 D-Q 0.3671 P-Q 0.2204 A-M 0.1212 H-N 0.0984 N-O 0.1132 E-L 0.1896 C-P 0.0451 B-J 0.2085 H-J 0.2842 F-O 0.1419 L-M 0.1746 B-C 0.4131 E-M 0.3629 C-Q 0.1842 E-Q 0.3778 F-H 0.0831 A-G 0.311 Use Dijkstra’s algorithm to solve for the shortest path from P to J, explaining each step clearly and systematically.
<think> Step 1: Initialization Initial distances: {'A': inf, 'B': inf, 'C': inf, 'D': inf, 'E': inf, 'F': inf, 'G': inf, 'H': inf, 'I': inf, 'J': inf, 'K': inf, 'L': inf, 'M': inf, 'N': inf, 'O': inf, 'P': 0, 'Q': inf, 'R': inf} Initial previous: {'A': None, 'B': None, 'C': None, 'D': None, 'E': None, 'F': None, 'G': None, 'H': None, 'I': None, 'J': None, 'K': None, 'L': None, 'M': None, 'N': None, 'O': None, 'P': None, 'Q': None, 'R': None} Set distance[P] = 0 Initial priority queue: [(0, 'P')] Step 2: Extract minimum from priority queue Popped node P with distance 0 Mark P as visited Visited set: {'P'} Checking neighbours of P Inspect edge P -> B (weight 0.4192) New possible distance = 0 + 0.4192 = 0.4192 Update: 0.4192 < inf Updated distance[B] = 0.4192 Updated previous[B] = P Pushed (0.4192, B) to queue Inspect edge P -> R (weight 0.4622) New possible distance = 0 + 0.4622 = 0.4622 Update: 0.4622 < inf Updated distance[R] = 0.4622 Updated previous[R] = P Pushed (0.4622, R) to queue Inspect edge P -> Q (weight 0.2204) New possible distance = 0 + 0.2204 = 0.2204 Update: 0.2204 < inf Updated distance[Q] = 0.2204 Updated previous[Q] = P Pushed (0.2204, Q) to queue Inspect edge P -> C (weight 0.0451) New possible distance = 0 + 0.0451 = 0.0451 Update: 0.0451 < inf Updated distance[C] = 0.0451 Updated previous[C] = P Pushed (0.0451, C) to queue Priority queue now: [(0.0451, 'C'), (0.2204, 'Q'), (0.4192, 'B'), (0.4622, 'R')] Step 3: Extract minimum from priority queue Popped node C with distance 0.0451 Mark C as visited Visited set: {'C', 'P'} Checking neighbours of C Inspect edge C -> I (weight 0.2401) New possible distance = 0.0451 + 0.2401 = 0.2852 Update: 0.2852 < inf Updated distance[I] = 0.2852 Updated previous[I] = C Pushed (0.2852, I) to queue Inspect edge C -> B (weight 0.4131) New possible distance = 0.0451 + 0.4131 = 0.45820000000000005 No update needed (current best: 0.4192) Inspect edge C -> Q (weight 0.1842) New possible distance = 0.0451 + 0.1842 = 0.2293 No update needed (current best: 0.2204) Inspect edge C -> P (weight 0.0451) Neighbour P already visited, skipping. Priority queue now: [(0.2204, 'Q'), (0.2852, 'I'), (0.4192, 'B'), (0.4622, 'R')] Step 4: Extract minimum from priority queue Popped node Q with distance 0.2204 Mark Q as visited Visited set: {'Q', 'C', 'P'} Checking neighbours of Q Inspect edge Q -> R (weight 0.4135) New possible distance = 0.2204 + 0.4135 = 0.6339 No update needed (current best: 0.4622) Inspect edge Q -> D (weight 0.3671) New possible distance = 0.2204 + 0.3671 = 0.5875 Update: 0.5875 < inf Updated distance[D] = 0.5875 Updated previous[D] = Q Pushed (0.5875, D) to queue Inspect edge Q -> C (weight 0.1842) Neighbour C already visited, skipping. Inspect edge Q -> P (weight 0.2204) Neighbour P already visited, skipping. Inspect edge Q -> E (weight 0.3778) New possible distance = 0.2204 + 0.3778 = 0.5982000000000001 Update: 0.5982000000000001 < inf Updated distance[E] = 0.5982000000000001 Updated previous[E] = Q Pushed (0.5982000000000001, E) to queue Inspect edge Q -> I (weight 0.1761) New possible distance = 0.2204 + 0.1761 = 0.3965 No update needed (current best: 0.2852) Inspect edge Q -> K (weight 0.3958) New possible distance = 0.2204 + 0.3958 = 0.6162 Update: 0.6162 < inf Updated distance[K] = 0.6162 Updated previous[K] = Q Pushed (0.6162, K) to queue Priority queue now: [(0.2852, 'I'), (0.4622, 'R'), (0.4192, 'B'), (0.5875, 'D'), (0.5982000000000001, 'E'), (0.6162, 'K')] Step 5: Extract minimum from priority queue Popped node I with distance 0.2852 Mark I as visited Visited set: {'I', 'Q', 'C', 'P'} Checking neighbours of I Inspect edge I -> J (weight 0.3928) New possible distance = 0.2852 + 0.3928 = 0.6779999999999999 Update: 0.6779999999999999 < inf Updated distance[J] = 0.6779999999999999 Updated previous[J] = I Pushed (0.6779999999999999, J) to queue Inspect edge I -> C (weight 0.2401) Neighbour C already visited, skipping. Inspect edge I -> G (weight 0.374) New possible distance = 0.2852 + 0.374 = 0.6592 Update: 0.6592 < inf Updated distance[G] = 0.6592 Updated previous[G] = I Pushed (0.6592, G) to queue Inspect edge I -> B (weight 0.4364) New possible distance = 0.2852 + 0.4364 = 0.7216 No update needed (current best: 0.4192) Inspect edge I -> K (weight 0.3432) New possible distance = 0.2852 + 0.3432 = 0.6284000000000001 No update needed (current best: 0.6162) Inspect edge I -> Q (weight 0.1761) Neighbour Q already visited, skipping. Inspect edge I -> H (weight 0.4173) New possible distance = 0.2852 + 0.4173 = 0.7025 Update: 0.7025 < inf Updated distance[H] = 0.7025 Updated previous[H] = I Pushed (0.7025, H) to queue Priority queue now: [(0.4192, 'B'), (0.4622, 'R'), (0.6162, 'K'), (0.5875, 'D'), (0.5982000000000001, 'E'), (0.6779999999999999, 'J'), (0.6592, 'G'), (0.7025, 'H')] Step 6: Extract minimum from priority queue Popped node B with distance 0.4192 Mark B as visited Visited set: {'Q', 'C', 'B', 'I', 'P'} Checking neighbours of B Inspect edge B -> J (weight 0.2085) New possible distance = 0.4192 + 0.2085 = 0.6277 Update: 0.6277 < 0.6779999999999999 Updated distance[J] = 0.6277 Updated previous[J] = B Pushed (0.6277, J) to queue Inspect edge B -> P (weight 0.4192) Neighbour P already visited, skipping. Inspect edge B -> C (weight 0.4131) Neighbour C already visited, skipping. Inspect edge B -> I (weight 0.4364) Neighbour I already visited, skipping. Priority queue now: [(0.4622, 'R'), (0.5875, 'D'), (0.6162, 'K'), (0.6277, 'J'), (0.5982000000000001, 'E'), (0.6779999999999999, 'J'), (0.6592, 'G'), (0.7025, 'H')] Step 7: Extract minimum from priority queue Popped node R with distance 0.4622 Mark R as visited Visited set: {'Q', 'R', 'C', 'B', 'I', 'P'} Checking neighbours of R Inspect edge R -> Q (weight 0.4135) Neighbour Q already visited, skipping. Inspect edge R -> P (weight 0.4622) Neighbour P already visited, skipping. Inspect edge R -> D (weight 0.3006) New possible distance = 0.4622 + 0.3006 = 0.7627999999999999 No update needed (current best: 0.5875) Priority queue now: [(0.5875, 'D'), (0.5982000000000001, 'E'), (0.6162, 'K'), (0.6277, 'J'), (0.7025, 'H'), (0.6779999999999999, 'J'), (0.6592, 'G')] Step 8: Extract minimum from priority queue Popped node D with distance 0.5875 Mark D as visited Visited set: {'D', 'Q', 'R', 'C', 'B', 'I', 'P'} Checking neighbours of D Inspect edge D -> E (weight 0.2903) New possible distance = 0.5875 + 0.2903 = 0.8778 No update needed (current best: 0.5982000000000001) Inspect edge D -> Q (weight 0.3671) Neighbour Q already visited, skipping. Inspect edge D -> M (weight 0.6524) New possible distance = 0.5875 + 0.6524 = 1.2399 Update: 1.2399 < inf Updated distance[M] = 1.2399 Updated previous[M] = D Pushed (1.2399, M) to queue Inspect edge D -> R (weight 0.3006) Neighbour R already visited, skipping. Priority queue now: [(0.5982000000000001, 'E'), (0.6277, 'J'), (0.6162, 'K'), (0.6592, 'G'), (0.7025, 'H'), (0.6779999999999999, 'J'), (1.2399, 'M')] Step 9: Extract minimum from priority queue Popped node E with distance 0.5982000000000001 Mark E as visited Visited set: {'D', 'Q', 'R', 'C', 'E', 'B', 'I', 'P'} Checking neighbours of E Inspect edge E -> D (weight 0.2903) Neighbour D already visited, skipping. Inspect edge E -> M (weight 0.3629) New possible distance = 0.5982000000000001 + 0.3629 = 0.9611000000000001 Update: 0.9611000000000001 < 1.2399 Updated distance[M] = 0.9611000000000001 Updated previous[M] = E Pushed (0.9611000000000001, M) to queue Inspect edge E -> L (weight 0.1896) New possible distance = 0.5982000000000001 + 0.1896 = 0.7878000000000001 Update: 0.7878000000000001 < inf Updated distance[L] = 0.7878000000000001 Updated previous[L] = E Pushed (0.7878000000000001, L) to queue Inspect edge E -> K (weight 0.202) New possible distance = 0.5982000000000001 + 0.202 = 0.8002 No update needed (current best: 0.6162) Inspect edge E -> Q (weight 0.3778) Neighbour Q already visited, skipping. Priority queue now: [(0.6162, 'K'), (0.6277, 'J'), (0.6779999999999999, 'J'), (0.6592, 'G'), (0.7025, 'H'), (1.2399, 'M'), (0.9611000000000001, 'M'), (0.7878000000000001, 'L')] Step 10: Extract minimum from priority queue Popped node K with distance 0.6162 Mark K as visited Visited set: {'K', 'D', 'Q', 'R', 'C', 'E', 'B', 'I', 'P'} Checking neighbours of K Inspect edge K -> M (weight 0.2474) New possible distance = 0.6162 + 0.2474 = 0.8635999999999999 Update: 0.8635999999999999 < 0.9611000000000001 Updated distance[M] = 0.8635999999999999 Updated previous[M] = K Pushed (0.8635999999999999, M) to queue Inspect edge K -> L (weight 0.1214) New possible distance = 0.6162 + 0.1214 = 0.7375999999999999 Update: 0.7375999999999999 < 0.7878000000000001 Updated distance[L] = 0.7375999999999999 Updated previous[L] = K Pushed (0.7375999999999999, L) to queue Inspect edge K -> G (weight 0.2084) New possible distance = 0.6162 + 0.2084 = 0.8246 No update needed (current best: 0.6592) Inspect edge K -> E (weight 0.202) Neighbour E already visited, skipping. Inspect edge K -> I (weight 0.3432) Neighbour I already visited, skipping. Inspect edge K -> Q (weight 0.3958) Neighbour Q already visited, skipping. Priority queue now: [(0.6277, 'J'), (0.6592, 'G'), (0.6779999999999999, 'J'), (0.7375999999999999, 'L'), (0.7025, 'H'), (1.2399, 'M'), (0.9611000000000001, 'M'), (0.8635999999999999, 'M'), (0.7878000000000001, 'L')] Step 11: Extract minimum from priority queue Popped node J with distance 0.6277 Mark J as visited Visited set: {'K', 'D', 'Q', 'R', 'C', 'E', 'B', 'I', 'J', 'P'} Reached target node J, stopping early. Step Final: Reconstruct path Shortest path: P -> B -> J Total distance: 0.6277 </think> <response>The shortest path from P to J is P -> B -> J. Total distance 0.6277.</response>
18
e05408c3-47d7-45b9-9962-01eef5ba20d2
An undirected planar graph has the following edge lengths: E-H 0.5238 A-J 0.2799 F-G 0.2328 D-G 0.2837 B-K 0.2705 C-L 0.1003 D-E 0.02 C-D 0.2661 B-L 0.0772 B-D 0.2672 J-K 0.2591 B-G 0.4137 C-K 0.2528 H-K 0.4531 D-L 0.2133 B-J 0.2702 A-I 0.3092 E-G 0.2944 C-E 0.273 I-J 0.062 B-F 0.5413 C-H 0.3622 B-C 0.1556 A-F 0.5644 I-K 0.2393 A-B 0.4789 Using Dijkstra’s algorithm, identify the shortest path between D and L and present a comprehensive step-by-step explanation.
<think> Step 1: Initialization Initial distances: {'A': inf, 'B': inf, 'C': inf, 'D': 0, 'E': inf, 'F': inf, 'G': inf, 'H': inf, 'I': inf, 'J': inf, 'K': inf, 'L': inf} Initial previous: {'A': None, 'B': None, 'C': None, 'D': None, 'E': None, 'F': None, 'G': None, 'H': None, 'I': None, 'J': None, 'K': None, 'L': None} Set distance[D] = 0 Initial priority queue: [(0, 'D')] Step 2: Extract minimum from priority queue Popped node D with distance 0 Mark D as visited Visited set: {'D'} Checking neighbours of D Inspect edge D -> E (weight 0.02) New possible distance = 0 + 0.02 = 0.02 Update: 0.02 < inf Updated distance[E] = 0.02 Updated previous[E] = D Pushed (0.02, E) to queue Inspect edge D -> B (weight 0.2672) New possible distance = 0 + 0.2672 = 0.2672 Update: 0.2672 < inf Updated distance[B] = 0.2672 Updated previous[B] = D Pushed (0.2672, B) to queue Inspect edge D -> G (weight 0.2837) New possible distance = 0 + 0.2837 = 0.2837 Update: 0.2837 < inf Updated distance[G] = 0.2837 Updated previous[G] = D Pushed (0.2837, G) to queue Inspect edge D -> L (weight 0.2133) New possible distance = 0 + 0.2133 = 0.2133 Update: 0.2133 < inf Updated distance[L] = 0.2133 Updated previous[L] = D Pushed (0.2133, L) to queue Inspect edge D -> C (weight 0.2661) New possible distance = 0 + 0.2661 = 0.2661 Update: 0.2661 < inf Updated distance[C] = 0.2661 Updated previous[C] = D Pushed (0.2661, C) to queue Priority queue now: [(0.02, 'E'), (0.2133, 'L'), (0.2837, 'G'), (0.2672, 'B'), (0.2661, 'C')] Step 3: Extract minimum from priority queue Popped node E with distance 0.02 Mark E as visited Visited set: {'D', 'E'} Checking neighbours of E Inspect edge E -> D (weight 0.02) Neighbour D already visited, skipping. Inspect edge E -> G (weight 0.2944) New possible distance = 0.02 + 0.2944 = 0.3144 No update needed (current best: 0.2837) Inspect edge E -> C (weight 0.273) New possible distance = 0.02 + 0.273 = 0.29300000000000004 No update needed (current best: 0.2661) Inspect edge E -> H (weight 0.5238) New possible distance = 0.02 + 0.5238 = 0.5438000000000001 Update: 0.5438000000000001 < inf Updated distance[H] = 0.5438000000000001 Updated previous[H] = E Pushed (0.5438000000000001, H) to queue Priority queue now: [(0.2133, 'L'), (0.2661, 'C'), (0.2837, 'G'), (0.2672, 'B'), (0.5438000000000001, 'H')] Step 4: Extract minimum from priority queue Popped node L with distance 0.2133 Mark L as visited Visited set: {'L', 'D', 'E'} Reached target node L, stopping early. Step Final: Reconstruct path Shortest path: D -> L Total distance: 0.2133 </think> <response>The shortest path from D to L is D -> L. Total distance 0.2133.</response>
12
159998b0-987f-479c-bb4e-9d83c2e73734
Below are the edge weights for an undirected planar graph: F-P 0.1615 L-M 0.5856 C-F 0.9401 H-J 0.2735 E-P 0.2211 A-E 0.2023 J-R 0.4291 A-I 0.5002 M-N 0.1885 J-N 0.3908 B-E 0.055 G-P 0.1757 B-Q 0.4701 B-P 0.2324 A-Q 0.2907 B-F 0.3361 D-M 0.0859 K-M 0.5147 E-G 0.1048 J-K 0.3148 C-J 0.3639 G-L 0.1321 C-H 0.1175 N-R 0.0435 D-I 0.056 F-K 0.768 F-Q 0.8046 C-R 0.7928 D-O 0.2186 J-M 0.277 N-O 0.0862 A-L 0.1335 K-L 0.6387 I-O 0.2511 H-K 0.1035 I-L 0.5122 I-Q 0.5831 I-M 0.1346 O-Q 0.7581 E-L 0.1185 D-N 0.1914 G-K 0.5965 K-P 0.6438 A-B 0.2207 O-R 0.0644 C-K 0.1946 Apply Dijkstra’s algorithm to compute the shortest route from F to Q, providing a detailed explanation of every step.
<think> Step 1: Initialization Initial distances: {'A': inf, 'B': inf, 'C': inf, 'D': inf, 'E': inf, 'F': 0, 'G': inf, 'H': inf, 'I': inf, 'J': inf, 'K': inf, 'L': inf, 'M': inf, 'N': inf, 'O': inf, 'P': inf, 'Q': inf, 'R': inf} Initial previous: {'A': None, 'B': None, 'C': None, 'D': None, 'E': None, 'F': None, 'G': None, 'H': None, 'I': None, 'J': None, 'K': None, 'L': None, 'M': None, 'N': None, 'O': None, 'P': None, 'Q': None, 'R': None} Set distance[F] = 0 Initial priority queue: [(0, 'F')] Step 2: Extract minimum from priority queue Popped node F with distance 0 Mark F as visited Visited set: {'F'} Checking neighbours of F Inspect edge F -> K (weight 0.768) New possible distance = 0 + 0.768 = 0.768 Update: 0.768 < inf Updated distance[K] = 0.768 Updated previous[K] = F Pushed (0.768, K) to queue Inspect edge F -> Q (weight 0.8046) New possible distance = 0 + 0.8046 = 0.8046 Update: 0.8046 < inf Updated distance[Q] = 0.8046 Updated previous[Q] = F Pushed (0.8046, Q) to queue Inspect edge F -> C (weight 0.9401) New possible distance = 0 + 0.9401 = 0.9401 Update: 0.9401 < inf Updated distance[C] = 0.9401 Updated previous[C] = F Pushed (0.9401, C) to queue Inspect edge F -> P (weight 0.1615) New possible distance = 0 + 0.1615 = 0.1615 Update: 0.1615 < inf Updated distance[P] = 0.1615 Updated previous[P] = F Pushed (0.1615, P) to queue Inspect edge F -> B (weight 0.3361) New possible distance = 0 + 0.3361 = 0.3361 Update: 0.3361 < inf Updated distance[B] = 0.3361 Updated previous[B] = F Pushed (0.3361, B) to queue Priority queue now: [(0.1615, 'P'), (0.3361, 'B'), (0.9401, 'C'), (0.8046, 'Q'), (0.768, 'K')] Step 3: Extract minimum from priority queue Popped node P with distance 0.1615 Mark P as visited Visited set: {'F', 'P'} Checking neighbours of P Inspect edge P -> G (weight 0.1757) New possible distance = 0.1615 + 0.1757 = 0.3372 Update: 0.3372 < inf Updated distance[G] = 0.3372 Updated previous[G] = P Pushed (0.3372, G) to queue Inspect edge P -> E (weight 0.2211) New possible distance = 0.1615 + 0.2211 = 0.3826 Update: 0.3826 < inf Updated distance[E] = 0.3826 Updated previous[E] = P Pushed (0.3826, E) to queue Inspect edge P -> K (weight 0.6438) New possible distance = 0.1615 + 0.6438 = 0.8053 No update needed (current best: 0.768) Inspect edge P -> B (weight 0.2324) New possible distance = 0.1615 + 0.2324 = 0.39390000000000003 No update needed (current best: 0.3361) Inspect edge P -> F (weight 0.1615) Neighbour F already visited, skipping. Priority queue now: [(0.3361, 'B'), (0.3372, 'G'), (0.3826, 'E'), (0.8046, 'Q'), (0.768, 'K'), (0.9401, 'C')] Step 4: Extract minimum from priority queue Popped node B with distance 0.3361 Mark B as visited Visited set: {'F', 'P', 'B'} Checking neighbours of B Inspect edge B -> P (weight 0.2324) Neighbour P already visited, skipping. Inspect edge B -> A (weight 0.2207) New possible distance = 0.3361 + 0.2207 = 0.5568 Update: 0.5568 < inf Updated distance[A] = 0.5568 Updated previous[A] = B Pushed (0.5568, A) to queue Inspect edge B -> F (weight 0.3361) Neighbour F already visited, skipping. Inspect edge B -> E (weight 0.055) New possible distance = 0.3361 + 0.055 = 0.3911 No update needed (current best: 0.3826) Inspect edge B -> Q (weight 0.4701) New possible distance = 0.3361 + 0.4701 = 0.8062 No update needed (current best: 0.8046) Priority queue now: [(0.3372, 'G'), (0.768, 'K'), (0.3826, 'E'), (0.8046, 'Q'), (0.9401, 'C'), (0.5568, 'A')] Step 5: Extract minimum from priority queue Popped node G with distance 0.3372 Mark G as visited Visited set: {'G', 'F', 'P', 'B'} Checking neighbours of G Inspect edge G -> P (weight 0.1757) Neighbour P already visited, skipping. Inspect edge G -> E (weight 0.1048) New possible distance = 0.3372 + 0.1048 = 0.442 No update needed (current best: 0.3826) Inspect edge G -> L (weight 0.1321) New possible distance = 0.3372 + 0.1321 = 0.4693 Update: 0.4693 < inf Updated distance[L] = 0.4693 Updated previous[L] = G Pushed (0.4693, L) to queue Inspect edge G -> K (weight 0.5965) New possible distance = 0.3372 + 0.5965 = 0.9337 No update needed (current best: 0.768) Priority queue now: [(0.3826, 'E'), (0.768, 'K'), (0.4693, 'L'), (0.8046, 'Q'), (0.9401, 'C'), (0.5568, 'A')] Step 6: Extract minimum from priority queue Popped node E with distance 0.3826 Mark E as visited Visited set: {'B', 'E', 'G', 'F', 'P'} Checking neighbours of E Inspect edge E -> G (weight 0.1048) Neighbour G already visited, skipping. Inspect edge E -> P (weight 0.2211) Neighbour P already visited, skipping. Inspect edge E -> L (weight 0.1185) New possible distance = 0.3826 + 0.1185 = 0.5011 No update needed (current best: 0.4693) Inspect edge E -> A (weight 0.2023) New possible distance = 0.3826 + 0.2023 = 0.5849 No update needed (current best: 0.5568) Inspect edge E -> B (weight 0.055) Neighbour B already visited, skipping. Priority queue now: [(0.4693, 'L'), (0.768, 'K'), (0.5568, 'A'), (0.8046, 'Q'), (0.9401, 'C')] Step 7: Extract minimum from priority queue Popped node L with distance 0.4693 Mark L as visited Visited set: {'B', 'L', 'E', 'G', 'F', 'P'} Checking neighbours of L Inspect edge L -> A (weight 0.1335) New possible distance = 0.4693 + 0.1335 = 0.6028 No update needed (current best: 0.5568) Inspect edge L -> G (weight 0.1321) Neighbour G already visited, skipping. Inspect edge L -> E (weight 0.1185) Neighbour E already visited, skipping. Inspect edge L -> I (weight 0.5122) New possible distance = 0.4693 + 0.5122 = 0.9815 Update: 0.9815 < inf Updated distance[I] = 0.9815 Updated previous[I] = L Pushed (0.9815, I) to queue Inspect edge L -> K (weight 0.6387) New possible distance = 0.4693 + 0.6387 = 1.108 No update needed (current best: 0.768) Inspect edge L -> M (weight 0.5856) New possible distance = 0.4693 + 0.5856 = 1.0549 Update: 1.0549 < inf Updated distance[M] = 1.0549 Updated previous[M] = L Pushed (1.0549, M) to queue Priority queue now: [(0.5568, 'A'), (0.768, 'K'), (0.9401, 'C'), (0.8046, 'Q'), (0.9815, 'I'), (1.0549, 'M')] Step 8: Extract minimum from priority queue Popped node A with distance 0.5568 Mark A as visited Visited set: {'B', 'A', 'L', 'E', 'G', 'F', 'P'} Checking neighbours of A Inspect edge A -> I (weight 0.5002) New possible distance = 0.5568 + 0.5002 = 1.057 No update needed (current best: 0.9815) Inspect edge A -> L (weight 0.1335) Neighbour L already visited, skipping. Inspect edge A -> B (weight 0.2207) Neighbour B already visited, skipping. Inspect edge A -> E (weight 0.2023) Neighbour E already visited, skipping. Inspect edge A -> Q (weight 0.2907) New possible distance = 0.5568 + 0.2907 = 0.8474999999999999 No update needed (current best: 0.8046) Priority queue now: [(0.768, 'K'), (0.8046, 'Q'), (0.9401, 'C'), (1.0549, 'M'), (0.9815, 'I')] Step 9: Extract minimum from priority queue Popped node K with distance 0.768 Mark K as visited Visited set: {'B', 'K', 'A', 'L', 'E', 'G', 'F', 'P'} Checking neighbours of K Inspect edge K -> F (weight 0.768) Neighbour F already visited, skipping. Inspect edge K -> M (weight 0.5147) New possible distance = 0.768 + 0.5147 = 1.2827000000000002 No update needed (current best: 1.0549) Inspect edge K -> P (weight 0.6438) Neighbour P already visited, skipping. Inspect edge K -> H (weight 0.1035) New possible distance = 0.768 + 0.1035 = 0.8715 Update: 0.8715 < inf Updated distance[H] = 0.8715 Updated previous[H] = K Pushed (0.8715, H) to queue Inspect edge K -> L (weight 0.6387) Neighbour L already visited, skipping. Inspect edge K -> J (weight 0.3148) New possible distance = 0.768 + 0.3148 = 1.0828 Update: 1.0828 < inf Updated distance[J] = 1.0828 Updated previous[J] = K Pushed (1.0828, J) to queue Inspect edge K -> C (weight 0.1946) New possible distance = 0.768 + 0.1946 = 0.9626 No update needed (current best: 0.9401) Inspect edge K -> G (weight 0.5965) Neighbour G already visited, skipping. Priority queue now: [(0.8046, 'Q'), (0.8715, 'H'), (0.9401, 'C'), (1.0549, 'M'), (0.9815, 'I'), (1.0828, 'J')] Step 10: Extract minimum from priority queue Popped node Q with distance 0.8046 Mark Q as visited Visited set: {'B', 'K', 'A', 'L', 'Q', 'E', 'G', 'F', 'P'} Reached target node Q, stopping early. Step Final: Reconstruct path Shortest path: F -> Q Total distance: 0.8046 </think> <response>The shortest path from F to Q is F -> Q. Total distance 0.8046.</response>
18
a82e8f20-273b-4654-9283-97b00121101c
Here are the specified edge distances for an undirected planar graph: D-J 0.2758 E-P 0.2923 C-P 0.2231 H-K 0.2503 H-N 0.3629 E-M 0.2597 M-P 0.2186 I-J 0.4619 D-K 0.1235 C-E 0.3172 A-B 0.3625 K-P 0.2661 K-L 0.4334 C-D 0.0542 G-J 0.1168 B-H 0.1866 N-O 0.5595 H-P 0.1797 B-P 0.2574 B-M 0.3168 L-O 0.0211 F-K 0.3403 G-L 0.3262 L-N 0.5398 F-L 0.3414 J-K 0.3012 C-K 0.1406 E-I 0.3029 B-N 0.3672 D-I 0.3518 F-N 0.228 F-H 0.273 G-O 0.3269 C-I 0.3463 G-K 0.3108 A-O 0.6278 A-N 0.0684 Employ Dijkstra’s algorithm to calculate the shortest path from J to N, detailing each step of the solution.
<think> Step 1: Initialization Initial distances: {'A': inf, 'B': inf, 'C': inf, 'D': inf, 'E': inf, 'F': inf, 'G': inf, 'H': inf, 'I': inf, 'J': 0, 'K': inf, 'L': inf, 'M': inf, 'N': inf, 'O': inf, 'P': inf} Initial previous: {'A': None, 'B': None, 'C': None, 'D': None, 'E': None, 'F': None, 'G': None, 'H': None, 'I': None, 'J': None, 'K': None, 'L': None, 'M': None, 'N': None, 'O': None, 'P': None} Set distance[J] = 0 Initial priority queue: [(0, 'J')] Step 2: Extract minimum from priority queue Popped node J with distance 0 Mark J as visited Visited set: {'J'} Checking neighbours of J Inspect edge J -> I (weight 0.4619) New possible distance = 0 + 0.4619 = 0.4619 Update: 0.4619 < inf Updated distance[I] = 0.4619 Updated previous[I] = J Pushed (0.4619, I) to queue Inspect edge J -> D (weight 0.2758) New possible distance = 0 + 0.2758 = 0.2758 Update: 0.2758 < inf Updated distance[D] = 0.2758 Updated previous[D] = J Pushed (0.2758, D) to queue Inspect edge J -> K (weight 0.3012) New possible distance = 0 + 0.3012 = 0.3012 Update: 0.3012 < inf Updated distance[K] = 0.3012 Updated previous[K] = J Pushed (0.3012, K) to queue Inspect edge J -> G (weight 0.1168) New possible distance = 0 + 0.1168 = 0.1168 Update: 0.1168 < inf Updated distance[G] = 0.1168 Updated previous[G] = J Pushed (0.1168, G) to queue Priority queue now: [(0.1168, 'G'), (0.2758, 'D'), (0.3012, 'K'), (0.4619, 'I')] Step 3: Extract minimum from priority queue Popped node G with distance 0.1168 Mark G as visited Visited set: {'J', 'G'} Checking neighbours of G Inspect edge G -> L (weight 0.3262) New possible distance = 0.1168 + 0.3262 = 0.443 Update: 0.443 < inf Updated distance[L] = 0.443 Updated previous[L] = G Pushed (0.443, L) to queue Inspect edge G -> O (weight 0.3269) New possible distance = 0.1168 + 0.3269 = 0.44370000000000004 Update: 0.44370000000000004 < inf Updated distance[O] = 0.44370000000000004 Updated previous[O] = G Pushed (0.44370000000000004, O) to queue Inspect edge G -> K (weight 0.3108) New possible distance = 0.1168 + 0.3108 = 0.42760000000000004 No update needed (current best: 0.3012) Inspect edge G -> J (weight 0.1168) Neighbour J already visited, skipping. Priority queue now: [(0.2758, 'D'), (0.443, 'L'), (0.3012, 'K'), (0.4619, 'I'), (0.44370000000000004, 'O')] Step 4: Extract minimum from priority queue Popped node D with distance 0.2758 Mark D as visited Visited set: {'J', 'D', 'G'} Checking neighbours of D Inspect edge D -> K (weight 0.1235) New possible distance = 0.2758 + 0.1235 = 0.3993 No update needed (current best: 0.3012) Inspect edge D -> J (weight 0.2758) Neighbour J already visited, skipping. Inspect edge D -> I (weight 0.3518) New possible distance = 0.2758 + 0.3518 = 0.6275999999999999 No update needed (current best: 0.4619) Inspect edge D -> C (weight 0.0542) New possible distance = 0.2758 + 0.0542 = 0.32999999999999996 Update: 0.32999999999999996 < inf Updated distance[C] = 0.32999999999999996 Updated previous[C] = D Pushed (0.32999999999999996, C) to queue Priority queue now: [(0.3012, 'K'), (0.32999999999999996, 'C'), (0.44370000000000004, 'O'), (0.4619, 'I'), (0.443, 'L')] Step 5: Extract minimum from priority queue Popped node K with distance 0.3012 Mark K as visited Visited set: {'J', 'K', 'D', 'G'} Checking neighbours of K Inspect edge K -> D (weight 0.1235) Neighbour D already visited, skipping. Inspect edge K -> F (weight 0.3403) New possible distance = 0.3012 + 0.3403 = 0.6415 Update: 0.6415 < inf Updated distance[F] = 0.6415 Updated previous[F] = K Pushed (0.6415, F) to queue Inspect edge K -> P (weight 0.2661) New possible distance = 0.3012 + 0.2661 = 0.5673 Update: 0.5673 < inf Updated distance[P] = 0.5673 Updated previous[P] = K Pushed (0.5673, P) to queue Inspect edge K -> H (weight 0.2503) New possible distance = 0.3012 + 0.2503 = 0.5515000000000001 Update: 0.5515000000000001 < inf Updated distance[H] = 0.5515000000000001 Updated previous[H] = K Pushed (0.5515000000000001, H) to queue Inspect edge K -> J (weight 0.3012) Neighbour J already visited, skipping. Inspect edge K -> L (weight 0.4334) New possible distance = 0.3012 + 0.4334 = 0.7346 No update needed (current best: 0.443) Inspect edge K -> C (weight 0.1406) New possible distance = 0.3012 + 0.1406 = 0.4418 No update needed (current best: 0.32999999999999996) Inspect edge K -> G (weight 0.3108) Neighbour G already visited, skipping. Priority queue now: [(0.32999999999999996, 'C'), (0.443, 'L'), (0.44370000000000004, 'O'), (0.4619, 'I'), (0.6415, 'F'), (0.5673, 'P'), (0.5515000000000001, 'H')] Step 6: Extract minimum from priority queue Popped node C with distance 0.32999999999999996 Mark C as visited Visited set: {'K', 'D', 'C', 'G', 'J'} Checking neighbours of C Inspect edge C -> I (weight 0.3463) New possible distance = 0.32999999999999996 + 0.3463 = 0.6762999999999999 No update needed (current best: 0.4619) Inspect edge C -> E (weight 0.3172) New possible distance = 0.32999999999999996 + 0.3172 = 0.6472 Update: 0.6472 < inf Updated distance[E] = 0.6472 Updated previous[E] = C Pushed (0.6472, E) to queue Inspect edge C -> K (weight 0.1406) Neighbour K already visited, skipping. Inspect edge C -> D (weight 0.0542) Neighbour D already visited, skipping. Inspect edge C -> P (weight 0.2231) New possible distance = 0.32999999999999996 + 0.2231 = 0.5530999999999999 Update: 0.5530999999999999 < 0.5673 Updated distance[P] = 0.5530999999999999 Updated previous[P] = C Pushed (0.5530999999999999, P) to queue Priority queue now: [(0.443, 'L'), (0.4619, 'I'), (0.44370000000000004, 'O'), (0.5515000000000001, 'H'), (0.6415, 'F'), (0.5673, 'P'), (0.6472, 'E'), (0.5530999999999999, 'P')] Step 7: Extract minimum from priority queue Popped node L with distance 0.443 Mark L as visited Visited set: {'K', 'L', 'D', 'C', 'G', 'J'} Checking neighbours of L Inspect edge L -> O (weight 0.0211) New possible distance = 0.443 + 0.0211 = 0.4641 No update needed (current best: 0.44370000000000004) Inspect edge L -> G (weight 0.3262) Neighbour G already visited, skipping. Inspect edge L -> K (weight 0.4334) Neighbour K already visited, skipping. Inspect edge L -> N (weight 0.5398) New possible distance = 0.443 + 0.5398 = 0.9827999999999999 Update: 0.9827999999999999 < inf Updated distance[N] = 0.9827999999999999 Updated previous[N] = L Pushed (0.9827999999999999, N) to queue Inspect edge L -> F (weight 0.3414) New possible distance = 0.443 + 0.3414 = 0.7844 No update needed (current best: 0.6415) Priority queue now: [(0.44370000000000004, 'O'), (0.4619, 'I'), (0.5530999999999999, 'P'), (0.5515000000000001, 'H'), (0.6415, 'F'), (0.5673, 'P'), (0.6472, 'E'), (0.9827999999999999, 'N')] Step 8: Extract minimum from priority queue Popped node O with distance 0.44370000000000004 Mark O as visited Visited set: {'K', 'L', 'D', 'C', 'O', 'G', 'J'} Checking neighbours of O Inspect edge O -> L (weight 0.0211) Neighbour L already visited, skipping. Inspect edge O -> A (weight 0.6278) New possible distance = 0.44370000000000004 + 0.6278 = 1.0715000000000001 Update: 1.0715000000000001 < inf Updated distance[A] = 1.0715000000000001 Updated previous[A] = O Pushed (1.0715000000000001, A) to queue Inspect edge O -> N (weight 0.5595) New possible distance = 0.44370000000000004 + 0.5595 = 1.0032 No update needed (current best: 0.9827999999999999) Inspect edge O -> G (weight 0.3269) Neighbour G already visited, skipping. Priority queue now: [(0.4619, 'I'), (0.5515000000000001, 'H'), (0.5530999999999999, 'P'), (0.9827999999999999, 'N'), (0.6415, 'F'), (0.5673, 'P'), (0.6472, 'E'), (1.0715000000000001, 'A')] Step 9: Extract minimum from priority queue Popped node I with distance 0.4619 Mark I as visited Visited set: {'K', 'L', 'D', 'C', 'O', 'G', 'I', 'J'} Checking neighbours of I Inspect edge I -> J (weight 0.4619) Neighbour J already visited, skipping. Inspect edge I -> C (weight 0.3463) Neighbour C already visited, skipping. Inspect edge I -> E (weight 0.3029) New possible distance = 0.4619 + 0.3029 = 0.7647999999999999 No update needed (current best: 0.6472) Inspect edge I -> D (weight 0.3518) Neighbour D already visited, skipping. Priority queue now: [(0.5515000000000001, 'H'), (0.6415, 'F'), (0.5530999999999999, 'P'), (0.9827999999999999, 'N'), (1.0715000000000001, 'A'), (0.5673, 'P'), (0.6472, 'E')] Step 10: Extract minimum from priority queue Popped node H with distance 0.5515000000000001 Mark H as visited Visited set: {'K', 'L', 'D', 'C', 'O', 'G', 'I', 'J', 'H'} Checking neighbours of H Inspect edge H -> F (weight 0.273) New possible distance = 0.5515000000000001 + 0.273 = 0.8245000000000001 No update needed (current best: 0.6415) Inspect edge H -> K (weight 0.2503) Neighbour K already visited, skipping. Inspect edge H -> N (weight 0.3629) New possible distance = 0.5515000000000001 + 0.3629 = 0.9144000000000001 Update: 0.9144000000000001 < 0.9827999999999999 Updated distance[N] = 0.9144000000000001 Updated previous[N] = H Pushed (0.9144000000000001, N) to queue Inspect edge H -> P (weight 0.1797) New possible distance = 0.5515000000000001 + 0.1797 = 0.7312000000000001 No update needed (current best: 0.5530999999999999) Inspect edge H -> B (weight 0.1866) New possible distance = 0.5515000000000001 + 0.1866 = 0.7381000000000001 Update: 0.7381000000000001 < inf Updated distance[B] = 0.7381000000000001 Updated previous[B] = H Pushed (0.7381000000000001, B) to queue Priority queue now: [(0.5530999999999999, 'P'), (0.6415, 'F'), (0.5673, 'P'), (0.7381000000000001, 'B'), (1.0715000000000001, 'A'), (0.6472, 'E'), (0.9144000000000001, 'N'), (0.9827999999999999, 'N')] Step 11: Extract minimum from priority queue Popped node P with distance 0.5530999999999999 Mark P as visited Visited set: {'K', 'L', 'D', 'C', 'O', 'G', 'I', 'J', 'H', 'P'} Checking neighbours of P Inspect edge P -> E (weight 0.2923) New possible distance = 0.5530999999999999 + 0.2923 = 0.8453999999999999 No update needed (current best: 0.6472) Inspect edge P -> K (weight 0.2661) Neighbour K already visited, skipping. Inspect edge P -> B (weight 0.2574) New possible distance = 0.5530999999999999 + 0.2574 = 0.8105 No update needed (current best: 0.7381000000000001) Inspect edge P -> M (weight 0.2186) New possible distance = 0.5530999999999999 + 0.2186 = 0.7716999999999999 Update: 0.7716999999999999 < inf Updated distance[M] = 0.7716999999999999 Updated previous[M] = P Pushed (0.7716999999999999, M) to queue Inspect edge P -> H (weight 0.1797) Neighbour H already visited, skipping. Inspect edge P -> C (weight 0.2231) Neighbour C already visited, skipping. Priority queue now: [(0.5673, 'P'), (0.6415, 'F'), (0.6472, 'E'), (0.7381000000000001, 'B'), (1.0715000000000001, 'A'), (0.9827999999999999, 'N'), (0.9144000000000001, 'N'), (0.7716999999999999, 'M')] Step 12: Extract minimum from priority queue Popped node P with distance 0.5673 Node P already visited, skipping. Step 13: Extract minimum from priority queue Popped node F with distance 0.6415 Mark F as visited Visited set: {'K', 'L', 'D', 'C', 'O', 'G', 'I', 'J', 'H', 'F', 'P'} Checking neighbours of F Inspect edge F -> H (weight 0.273) Neighbour H already visited, skipping. Inspect edge F -> N (weight 0.228) New possible distance = 0.6415 + 0.228 = 0.8694999999999999 Update: 0.8694999999999999 < 0.9144000000000001 Updated distance[N] = 0.8694999999999999 Updated previous[N] = F Pushed (0.8694999999999999, N) to queue Inspect edge F -> K (weight 0.3403) Neighbour K already visited, skipping. Inspect edge F -> L (weight 0.3414) Neighbour L already visited, skipping. Priority queue now: [(0.6472, 'E'), (0.7381000000000001, 'B'), (0.8694999999999999, 'N'), (0.7716999999999999, 'M'), (1.0715000000000001, 'A'), (0.9827999999999999, 'N'), (0.9144000000000001, 'N')] Step 14: Extract minimum from priority queue Popped node E with distance 0.6472 Mark E as visited Visited set: {'K', 'L', 'D', 'C', 'E', 'O', 'G', 'I', 'J', 'H', 'F', 'P'} Checking neighbours of E Inspect edge E -> M (weight 0.2597) New possible distance = 0.6472 + 0.2597 = 0.9069 No update needed (current best: 0.7716999999999999) Inspect edge E -> P (weight 0.2923) Neighbour P already visited, skipping. Inspect edge E -> I (weight 0.3029) Neighbour I already visited, skipping. Inspect edge E -> C (weight 0.3172) Neighbour C already visited, skipping. Priority queue now: [(0.7381000000000001, 'B'), (0.7716999999999999, 'M'), (0.8694999999999999, 'N'), (0.9144000000000001, 'N'), (1.0715000000000001, 'A'), (0.9827999999999999, 'N')] Step 15: Extract minimum from priority queue Popped node B with distance 0.7381000000000001 Mark B as visited Visited set: {'B', 'K', 'L', 'D', 'C', 'E', 'O', 'G', 'I', 'J', 'H', 'F', 'P'} Checking neighbours of B Inspect edge B -> M (weight 0.3168) New possible distance = 0.7381000000000001 + 0.3168 = 1.0549000000000002 No update needed (current best: 0.7716999999999999) Inspect edge B -> P (weight 0.2574) Neighbour P already visited, skipping. Inspect edge B -> A (weight 0.3625) New possible distance = 0.7381000000000001 + 0.3625 = 1.1006 No update needed (current best: 1.0715000000000001) Inspect edge B -> H (weight 0.1866) Neighbour H already visited, skipping. Inspect edge B -> N (weight 0.3672) New possible distance = 0.7381000000000001 + 0.3672 = 1.1053000000000002 No update needed (current best: 0.8694999999999999) Priority queue now: [(0.7716999999999999, 'M'), (0.9144000000000001, 'N'), (0.8694999999999999, 'N'), (0.9827999999999999, 'N'), (1.0715000000000001, 'A')] Step 16: Extract minimum from priority queue Popped node M with distance 0.7716999999999999 Mark M as visited Visited set: {'B', 'K', 'M', 'L', 'D', 'C', 'E', 'O', 'G', 'I', 'J', 'H', 'F', 'P'} Checking neighbours of M Inspect edge M -> E (weight 0.2597) Neighbour E already visited, skipping. Inspect edge M -> B (weight 0.3168) Neighbour B already visited, skipping. Inspect edge M -> P (weight 0.2186) Neighbour P already visited, skipping. Priority queue now: [(0.8694999999999999, 'N'), (0.9144000000000001, 'N'), (1.0715000000000001, 'A'), (0.9827999999999999, 'N')] Step 17: Extract minimum from priority queue Popped node N with distance 0.8694999999999999 Mark N as visited Visited set: {'B', 'K', 'M', 'L', 'D', 'N', 'C', 'E', 'O', 'G', 'I', 'J', 'H', 'F', 'P'} Reached target node N, stopping early. Step Final: Reconstruct path Shortest path: J -> K -> F -> N Total distance: 0.8694999999999999 </think> <response>The shortest path from J to N is J -> K -> F -> N. Total distance 0.8695.</response>
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c0e7620e-d2cf-454d-9679-e8120528e717
Here are the specified edge distances for an undirected planar graph: B-G 0.9645 A-G 0.384 D-H 0.2612 F-G 0.1103 C-D 0.2997 C-F 0.5167 A-H 0.1991 A-C 0.2553 B-F 0.8545 A-D 0.3798 D-E 0.3353 C-E 0.3279 B-E 0.4561 A-F 0.2954 C-H 0.0729 D-G 0.7491 B-C 0.4675 Employ Dijkstra’s algorithm to calculate the shortest path from D to A, detailing each step of the solution.
<think> Step 1: Initialization Initial distances: {'A': inf, 'B': inf, 'C': inf, 'D': 0, 'E': inf, 'F': inf, 'G': inf, 'H': inf} Initial previous: {'A': None, 'B': None, 'C': None, 'D': None, 'E': None, 'F': None, 'G': None, 'H': None} Set distance[D] = 0 Initial priority queue: [(0, 'D')] Step 2: Extract minimum from priority queue Popped node D with distance 0 Mark D as visited Visited set: {'D'} Checking neighbours of D Inspect edge D -> E (weight 0.3353) New possible distance = 0 + 0.3353 = 0.3353 Update: 0.3353 < inf Updated distance[E] = 0.3353 Updated previous[E] = D Pushed (0.3353, E) to queue Inspect edge D -> H (weight 0.2612) New possible distance = 0 + 0.2612 = 0.2612 Update: 0.2612 < inf Updated distance[H] = 0.2612 Updated previous[H] = D Pushed (0.2612, H) to queue Inspect edge D -> A (weight 0.3798) New possible distance = 0 + 0.3798 = 0.3798 Update: 0.3798 < inf Updated distance[A] = 0.3798 Updated previous[A] = D Pushed (0.3798, A) to queue Inspect edge D -> C (weight 0.2997) New possible distance = 0 + 0.2997 = 0.2997 Update: 0.2997 < inf Updated distance[C] = 0.2997 Updated previous[C] = D Pushed (0.2997, C) to queue Inspect edge D -> G (weight 0.7491) New possible distance = 0 + 0.7491 = 0.7491 Update: 0.7491 < inf Updated distance[G] = 0.7491 Updated previous[G] = D Pushed (0.7491, G) to queue Priority queue now: [(0.2612, 'H'), (0.2997, 'C'), (0.3798, 'A'), (0.3353, 'E'), (0.7491, 'G')] Step 3: Extract minimum from priority queue Popped node H with distance 0.2612 Mark H as visited Visited set: {'D', 'H'} Checking neighbours of H Inspect edge H -> A (weight 0.1991) New possible distance = 0.2612 + 0.1991 = 0.4603 No update needed (current best: 0.3798) Inspect edge H -> C (weight 0.0729) New possible distance = 0.2612 + 0.0729 = 0.3341 No update needed (current best: 0.2997) Inspect edge H -> D (weight 0.2612) Neighbour D already visited, skipping. Priority queue now: [(0.2997, 'C'), (0.3353, 'E'), (0.3798, 'A'), (0.7491, 'G')] Step 4: Extract minimum from priority queue Popped node C with distance 0.2997 Mark C as visited Visited set: {'C', 'D', 'H'} Checking neighbours of C Inspect edge C -> E (weight 0.3279) New possible distance = 0.2997 + 0.3279 = 0.6276 No update needed (current best: 0.3353) Inspect edge C -> B (weight 0.4675) New possible distance = 0.2997 + 0.4675 = 0.7672000000000001 Update: 0.7672000000000001 < inf Updated distance[B] = 0.7672000000000001 Updated previous[B] = C Pushed (0.7672000000000001, B) to queue Inspect edge C -> H (weight 0.0729) Neighbour H already visited, skipping. Inspect edge C -> D (weight 0.2997) Neighbour D already visited, skipping. Inspect edge C -> A (weight 0.2553) New possible distance = 0.2997 + 0.2553 = 0.555 No update needed (current best: 0.3798) Inspect edge C -> F (weight 0.5167) New possible distance = 0.2997 + 0.5167 = 0.8164 Update: 0.8164 < inf Updated distance[F] = 0.8164 Updated previous[F] = C Pushed (0.8164, F) to queue Priority queue now: [(0.3353, 'E'), (0.7491, 'G'), (0.3798, 'A'), (0.7672000000000001, 'B'), (0.8164, 'F')] Step 5: Extract minimum from priority queue Popped node E with distance 0.3353 Mark E as visited Visited set: {'C', 'D', 'E', 'H'} Checking neighbours of E Inspect edge E -> C (weight 0.3279) Neighbour C already visited, skipping. Inspect edge E -> D (weight 0.3353) Neighbour D already visited, skipping. Inspect edge E -> B (weight 0.4561) New possible distance = 0.3353 + 0.4561 = 0.7914 No update needed (current best: 0.7672000000000001) Priority queue now: [(0.3798, 'A'), (0.7491, 'G'), (0.8164, 'F'), (0.7672000000000001, 'B')] Step 6: Extract minimum from priority queue Popped node A with distance 0.3798 Mark A as visited Visited set: {'A', 'D', 'C', 'E', 'H'} Reached target node A, stopping early. Step Final: Reconstruct path Shortest path: D -> A Total distance: 0.3798 </think> <response>The shortest path from D to A is D -> A. Total distance 0.3798.</response>
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c8a78c24-8fa8-413d-a9b0-9d4f302a31b1
Given these edge distances in an undirected planar graph: A-B 0.327 A-C 0.3582 B-C 0.3199 Use Dijkstra’s algorithm to find the minimum path between A and C, showing the full step-by-step process.
<think> Step 1: Initialization Initial distances: {'A': 0, 'B': inf, 'C': inf} Initial previous: {'A': None, 'B': None, 'C': None} Set distance[A] = 0 Initial priority queue: [(0, 'A')] Step 2: Extract minimum from priority queue Popped node A with distance 0 Mark A as visited Visited set: {'A'} Checking neighbours of A Inspect edge A -> B (weight 0.327) New possible distance = 0 + 0.327 = 0.327 Update: 0.327 < inf Updated distance[B] = 0.327 Updated previous[B] = A Pushed (0.327, B) to queue Inspect edge A -> C (weight 0.3582) New possible distance = 0 + 0.3582 = 0.3582 Update: 0.3582 < inf Updated distance[C] = 0.3582 Updated previous[C] = A Pushed (0.3582, C) to queue Priority queue now: [(0.327, 'B'), (0.3582, 'C')] Step 3: Extract minimum from priority queue Popped node B with distance 0.327 Mark B as visited Visited set: {'A', 'B'} Checking neighbours of B Inspect edge B -> A (weight 0.327) Neighbour A already visited, skipping. Inspect edge B -> C (weight 0.3199) New possible distance = 0.327 + 0.3199 = 0.6469 No update needed (current best: 0.3582) Priority queue now: [(0.3582, 'C')] Step 4: Extract minimum from priority queue Popped node C with distance 0.3582 Mark C as visited Visited set: {'C', 'A', 'B'} Reached target node C, stopping early. Step Final: Reconstruct path Shortest path: A -> C Total distance: 0.3582 </think> <response>The shortest path from A to C is A -> C. Total distance 0.3582.</response>
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Dijkstra Shortest-Path Algorithm Dataset

Overview

This dataset contains randomly generated shortest-path problems together with detailed, step-by-step reasoning traces of Dijkstra’s algorithm.

Each example presents:

  • A weighted, undirected planar graph
  • A source and target vertex
  • A complete execution trace of Dijkstra’s algorithm
  • The final shortest path and total distance

The dataset is designed for:

  • Training and evaluating reasoning-capable language models
  • Studying structured algorithmic execution traces
  • Benchmarking step-by-step graph reasoning

Graph Generation Procedure

Graphs were generated using the following pipeline:

  1. Vertex Sampling

    • Number of vertices: 3 to 24 (inclusive)
    • Points sampled uniformly at random in the unit square
  2. Graph Construction

    • A Delaunay triangulation was computed over the sampled points
    • The resulting triangulation defines the undirected planar graph structure
  3. Edge Weights

    • Edge weights are the Euclidean distances between connected vertices

This procedure ensures:

  • Planar graphs
  • Sparse but well-connected structures
  • Real-valued edge weights
  • Geometrically meaningful shortest paths

Algorithm Implementation

Shortest paths were computed using a Python implementation of Dijkstra’s algorithm, relying on the standard heapq priority queue.

Each reasoning trace includes:

  • Initialization of distances and predecessor mappings
  • Priority queue state updates
  • Node extraction steps
  • Edge relaxation steps
  • Early stopping when the target is reached
  • Final path reconstruction

The trace is structured to make each intermediate step explicit and machine-readable.

Dataset Schema

Each row contains:

Field Description
id Unique identifier (UUID)
input Natural-language problem description
output Full reasoning trace and final answer
vertices Number of vertices in the graph

Example

{
  "id": "49696006-c29f-4e36-bac8-2a1586f68549",
  "input": "Given these edge distances in an undirected planar graph:\n\nB-C 0.3152\nA-C 0.6862\nA-B 0.4033\n\nUse Dijkstra’s algorithm to find the minimum path between B and C, showing the full step-by-step process.",
  "output": "<think>\nStep 1: Initialization\nInitial distances: {'A': inf, 'B': 0, 'C': inf}\n...\n</think>\n\n<response>The shortest path from B to C is B -> C. Total distance 0.3152.</response>",
  "vertices": 3
}

Intended Use

This dataset is suitable for:

  • Training models to emulate classical algorithms
  • Evaluating chain-of-thought reasoning on structured problems
  • Studying how models execute graph traversal procedures
  • Benchmarking reasoning fidelity against deterministic ground truth

Limitations

  • Distribution mismatch: Uniformly distributed planar points may not reflect real-world graph distributions.
  • Scale limitations: Graph sizes are relatively small (maximum 24 vertices).
  • Algorithmic ground truth is trivial: For practical applications, directly running Dijkstra’s algorithm is more reliable and efficient than using a language model.
  • Experimental focus: The dataset is primarily intended for reasoning research rather than production pathfinding tasks.

Licence

This dataset is released under the Creative Commons Attribution 4.0 (CC BY 4.0) license.

You are free to:

  • Share — copy and redistribute the material
  • Adapt — remix, transform, and build upon the material

Under the condition that appropriate credit is given.

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